Archiv der Kategorie: Mobility

Has the self-driving car at last arrived?

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Has the self-driving car at last arrived?

by Burkhard Bilger

The Google car knows every turn. It never gets drowsy or distracted, or wonders who has the right-of-way.

The Google car knows every turn. It never gets drowsy or distracted, or wonders who has the right-of-way. Illustration by Harry Campbell.

Human beings make terrible drivers. They talk on the phone and run red lights, signal to the left and turn to the right. They drink too much beer and plow into trees or veer into traffic as they swat at their kids. They have blind spots, leg cramps, seizures, and heart attacks. They rubberneck, hotdog, and take pity on turtles, cause fender benders, pileups, and head-on collisions. They nod off at the wheel, wrestle with maps, fiddle with knobs, have marital spats, take the curve too late, take the curve too hard, spill coffee in their laps, and flip over their cars. Of the ten million accidents that Americans are in every year, nine and a half million are their own damn fault.

A case in point: The driver in the lane to my right. He’s twisted halfway around in his seat, taking a picture of the Lexus that I’m riding in with an engineer named Anthony Levandowski. Both cars are heading south on Highway 880 in Oakland, going more than seventy miles an hour, yet the man takes his time. He holds his phone up to the window with both hands until the car is framed just so. Then he snaps the picture, checks it onscreen, and taps out a lengthy text message with his thumbs. By the time he puts his hands back on the wheel and glances up at the road, half a minute has passed.

Levandowski shakes his head. He’s used to this sort of thing. His Lexus is what you might call a custom model. It’s surmounted by a spinning laser turret and knobbed with cameras, radar, antennas, and G.P.S. It looks a little like an ice-cream truck, lightly weaponized for inner-city work. Levandowski used to tell people that the car was designed to chase tornadoes or to track mosquitoes, or that he belonged to an élite team of ghost hunters. But nowadays the vehicle is clearly marked: “Self-Driving Car.”

Every week for the past year and a half, Levandowski has taken the Lexus on the same slightly surreal commute. He leaves his house in Berkeley at around eight o’clock, waves goodbye to his fiancée and their son, and drives to his office in Mountain View, forty-three miles away. The ride takes him over surface streets and freeways, old salt flats and pine-green foothills, across the gusty blue of San Francisco Bay, and down into the heart of Silicon Valley. In rush-hour traffic, it can take two hours, but Levandowski doesn’t mind. He thinks of it as research. While other drivers are gawking at him, he is observing them: recording their maneuvers in his car’s sensor logs, analyzing traffic flow, and flagging any problems for future review. The only tiresome part is when there’s roadwork or an accident ahead and the Lexus insists that he take the wheel. A chime sounds, pleasant yet insistent, then a warning appears on his dashboard screen: “In one mile, prepare to resume manual control.”

Levandowski is an engineer at Google X, the company’s semi-secret lab for experimental technology. He turned thirty-three last March but still has the spindly build and nerdy good nature of the kids in my high-school science club. He wears black frame glasses and oversized neon sneakers, has a long, loping stride—he’s six feet seven—and is given to excitable talk on fantastical themes. Cybernetic dolphins! Self-harvesting farms! Like a lot of his colleagues in Mountain View, Levandowski is equal parts idealist and voracious capitalist. He wants to fix the world and make a fortune doing it. He comes by these impulses honestly: his mother is a French diplomat, his father an American businessman. Although Levandowski spent most of his childhood in Brussels, his English has no accent aside from a certain absence of inflection—the bright, electric chatter of a processor in overdrive. “My fiancée is a dancer in her soul,” he told me. “I’m a robot.”

What separates Levandowski from the nerds I knew is this: his wacky ideas tend to come true. “I only do cool shit,” he says. As a freshman at Berkeley, he launched an intranet service out of his basement that earned him fifty thousand dollars a year. As a sophomore, he won a national robotics competition with a machine made out of Legos that could sort Monopoly money—a fair analogy for what he’s been doing for Google lately. He was one of the principal architects of Street View and the Google Maps database, but those were just warmups. “The Wright Brothers era is over,” Levandowski assured me, as the Lexus took us across the Dumbarton Bridge. “This is more like Charles Lindbergh’s plane. And we’re trying to make it as robust and reliable as a 747.”

Not everyone finds this prospect appealing. As a commercial for the Dodge Charger put it two years ago, “Hands-free driving, cars that park themselves, an unmanned car driven by a search-engine company? We’ve seen that movie. It ends with robots harvesting our bodies for energy.” Levandowski understands the sentiment. He just has more faith in robots than most of us do. “People think that we’re going to pry the steering wheel from their cold, dead hands,” he told me, but they have it exactly wrong. Someday soon, he believes, a self-driving car will save your life.

The Google car is an old-fashioned sort of science fiction: this year’s model of last century’s make. It belongs to the gleaming, chrome-plated age of jet packs and rocket ships, transporter beams and cities beneath the sea, of a predicted future still well beyond our technology. In 1939, at the World’s Fair in New York, visitors stood in lines up to two miles long to see the General Motors Futurama exhibit. Inside, a conveyor belt carried them high above a miniature landscape, spread out beneath a glass dome. Its suburbs and skyscrapers were laced together by superhighways full of radio-guided cars. “Does it seem strange? Unbelievable?” the announcer asked. “Remember, this is the world of 1960.”

Not quite. Skyscrapers and superhighways made the deadline, but driverless cars still putter along in prototype. Human beings, as it turns out, aren’t easy to improve upon. For every accident they cause, they avoid a thousand others. They can weave through tight traffic and anticipate danger, gauge distance, direction, pace, and momentum. Americans drive nearly three trillion miles a year, I was told by Ron Medford, a former deputy administrator of the National Highway Traffic Safety Administration who now works for Google. It’s no wonder that we have thirty-two thousand fatalities along the way, he said. It’s a wonder the number is so low.

Levandowski keeps a collection of vintage illustrations and newsreels on his laptop, just to remind him of all the failed schemes and fizzled technologies of the past. When he showed them to me one night at his house, his face wore a crooked grin, like a father watching his son strike out in Little League. From 1957: A sedan cruises down a highway, guided by circuits in the road, while a family plays dominoes inside. “No traffic jam . . . no collisions . . . no driver fatigue.” From 1977: Engineers huddle around a driverless Ford on a test track. “Cars like this one may be on the nation’s roads by the year 2000!” Levandowski shook his head. “We didn’t come up with this idea,” he said. “We just got lucky that the computers and sensors were ready for us.”

Almost from the beginning, the field divided into two rival camps: smart roads and smart cars. General Motors pioneered the first approach in the late nineteen-fifties. Its Firebird III concept car—shaped like a jet fighter, with titanium tail fins and a glass-bubble cockpit—was designed to run on a test track embedded with an electrical cable, like the slot on a toy speedway. As the car passed over the cable, a receiver in its front end picked up a radio signal and followed it around the curve. Engineers at Berkeley later went a step further: they spiked the track with magnets, alternating their polarity in binary patterns to send messages to the car—“Slow down, sharp curve ahead.” Systems like these were fairly simple and reliable, but they had a chicken-and-egg problem. To be useful, they had to be built on a large scale; to be built on a large scale, they had to be useful. “We don’t have the money to fix potholes,” Levandowski says. “Why would we invest in putting wires in the road?”

Smart cars were more flexible but also more complex. They needed sensors to guide them, computers to steer them, digital maps to follow. In the nineteen-eighties, a German engineer named Ernst Dickmanns, at the Bundeswehr University in Munich, equipped a Mercedes van with video cameras and processors, then programmed it to follow lane lines. Soon it was steering itself around a track. By 1995, Dickmanns’s car was able to drive on the Autobahn from Munich to Odense, Denmark, going up to a hundred miles at a stretch without assistance. Surely the driverless age was at hand! Not yet. Smart cars were just clever enough to get drivers into trouble. The highways and test tracks they navigated were strictly controlled environments. The instant more variables were added—a pedestrian, say, or a traffic cop—their programming faltered. Ninety-eight per cent of driving is just following the dotted line. It’s the other two per cent that matters.

“There was no way, before 2000, to make something interesting,” the roboticist Sebastian Thrun told me. “The sensors weren’t there, the computers weren’t there, and the mapping wasn’t there. Radar was a device on a hilltop that cost two hundred million dollars. It wasn’t something you could buy at Radio Shack.” Thrun, who is forty-six, is the founder of the Google Car project. A wunderkind from the west German city of Solingen, he programmed his first driving simulator at the age of twelve. Slender and tan, with clear blue eyes and a smooth, seemingly boneless gait, he looks as if he just stepped off a dance floor in Ibiza. And yet, like Levandowski, he has a gift for seeing things through a machine’s eyes—for intuiting the logic by which it might apprehend the world.

When Thrun first arrived in the United States, in 1995, he took a job at the country’s leading center for driverless-car research: Carnegie Mellon University. He went on to build robots that explored mines in Virginia, guided visitors through the Smithsonian, and chatted with patients at a nursing home. What he didn’t build was driverless cars. Funding for private research in the field had dried up by then. And though Congress had set a goal that a third of all ground combat vehicles be autonomous by 2015, little had come of the effort. Every so often, Thrun recalls, military contractors, funded by the Defense Advanced Research Projects Agency, would roll out their latest prototype. “The demonstrations I saw mostly ended in crashes and breakdowns in the first half mile,” he told me. “DARPA was funding people who weren’t solving the problem. But they couldn’t tell if it was the technology or the people. So they did this crazy thing, which was really visionary.”

They held a race.

The first DARPA Grand Challenge took place in the Mojave Desert on March 13, 2004. It offered a million-dollar prize for what seemed like a simple task: build a car that can drive a hundred and forty-two miles without human intervention. Ernst Dickmanns’s car had gone similar distances on the Autobahn, but always with a driver in the seat to take over in the tricky stretches. The cars in the Grand Challenge would be empty, and the road would be rough: from Barstow, California, to Primm, Nevada. Instead of smooth curves and long straightaways, it had rocky climbs and hairpin turns; instead of road signs and lane lines, G.P.S. waypoints. “Today, we could do it in a few hours,” Thrun told me. “But at the time it felt like going to the moon in sneakers.”

Levandowski first heard about it from his mother. She’d seen a notice for the race when it was announced online, in 2002, and recalled that her son used to play with remote-control cars as a boy, crashing them into things on his bedroom floor. Was this so different? Levandowski was now a student at Berkeley, in the industrial-engineering department. When he wasn’t studying or rowing crew or winning Lego competitions, he was casting about for cool new shit to build—for a profit, if possible. “If he’s making money, it’s his confirmation that he’s creating value,” his friend Randy Miller told me. “I remember, when we were in college, we were at his house one day, and he told me that he’d rented out his bedroom. He’d put up a wall in his living room and was sleeping on a couch in one half, next to a big server tower that he’d built. I said, ‘Anthony, what the hell are you doing? You’ve got plenty of money. Why don’t you get your own place?’ And he said, ‘No. Until I can move to a stateroom on a 747, I want to live like this.’ ”

DARPA’s rules were vague on the subject of vehicles: anything that could drive itself would do. So Levandowski made a bold decision. He would build the world’s first autonomous motorcycle. This seemed like a stroke of genius at the time. (Miller says that it came to them in a hot tub in Tahoe, which sounds about right.) Good engineering is all about gaming the system, Levandowski says—about sidestepping obstacles rather than trying to run over them. His favorite example is from a robotics contest at M.I.T. in 1991. Tasked with building a machine that could shoot the most Ping-Pong balls into a tube, the students came up with dozens of ingenious contraptions. The winner, though, was infuriatingly simple: it had a mechanical arm reach over, drop a ball into the tube, then cover it up so that no others could get in. It won the contest in a single move. The motorcycle could be like that, Levandowski thought: quicker off the mark than a car and more maneuverable. It could slip through tighter barriers and drive just as fast. Also, it was a good way to get back at his mother, who’d never let him ride motorcycles as a kid. “Fine,” he thought. “I’ll just make one that rides itself.”

The flaw in this plan was obvious: a motorcycle can’t stand up on its own. It needs a rider to balance it—or else a complex, computer-controlled system of shafts and motors to adjust its position every hundredth of a second. “Before you can drive ten feet you have to do a year of engineering,” Levandowski says. The other racers had no such problem. They also had substantial academic and corporate backing: the Carnegie Mellon team was working with General Motors, Caltech with Northrop Grumman, Ohio State with Oshkosh trucking. When Levandowski went to the Berkeley faculty with his idea, the reaction was, at best, bemused disbelief. His adviser, Ken Goldberg, told him frankly that he had no chance of winning. “Anthony is probably the most creative undergraduate I’ve encountered in twenty years,” he told me. “But this was a very great stretch.”

Levandowski was unfazed. Over the next two years, he made more than two hundred cold calls to potential sponsors. He gradually scraped together thirty thousand dollars from Raytheon, Advanced Micro Devices, and others. (No motorcycle company was willing to put its name on the project.) Then he added a hundred thousand dollars of his own. In the meantime, he went about poaching the faculty’s graduate students. “He paid us in burritos,” Charles Smart, now a professor of mathematics at M.I.T., told me. “Always the same burritos. But I remember thinking, I hope he likes me and lets me work on this.” Levandowski had that effect on people. His mad enthusiasm for the project was matched only by his technical grasp of its challenges—and his willingness to go to any lengths to meet them. At one point, he offered Smart’s girlfriend and future wife five thousand dollars to break up with him until the project was done. “He was fairly serious,” Smart told me. “She hated the motorcycle project.”

There came a day when Goldberg realized that half his Ph.D. students had been working for Levandowski. They’d begun with a Yamaha dirt bike, made for a child, and stripped it down to its skeleton. They added cameras, gyros, G.P.S. modules, computers, roll bars, and an electric motor to turn the wheel. They wrote tens of thousands of lines of code. The videos of their early test runs, edited together, play like a jittery reel from “The Benny Hill Show”: bike takes off, engineers jump up and down, bike falls over—more than six hundred times in a row. “We built the bike and rebuilt the bike, just sort of groping in the dark,” Smart told me. “It’s like one of my colleagues once said: ‘You don’t understand, Charlie, this is robotics. Nothing actually works.’ ”

Finally, a year into the project, a Russian engineer named Alex Krasnov cracked the code. They’d thought that stability was a complex, nonlinear problem, but it turned out to be fairly simple. When the bike tipped to one side, Krasnov had it steer ever so slightly in the same direction. This created centrifugal acceleration that pulled the bike upright again. By doing this over and over, tracing tiny S-curves as it went, the motorcycle could hold to a straight line. On the video clip from that day, the bike wobbles a little at first, like a baby giraffe finding its legs, then suddenly, confidently circles the field—as if guided by an invisible hand. They called it the Ghost Rider.

The Grand Challenge proved to be one of the more humbling events in automotive history. Its sole consolation lay in shared misery. None of the fifteen finalists made it past the first ten miles; seven broke down within a mile. Ohio State’s six-wheel, thirty-thousand-pound TerraMax was brought up short by some bushes; Caltech’s Chevy Tahoe crashed into a fence. Even the winner, Carnegie Mellon, earned at best a Pyrrhic victory. Its robotic Humvee, Sandstorm, drove just seven and a half miles before careering off course. A helicopter later found it beached on an embankment, wreathed in smoke, its back wheels spinning so furiously that they’d burst into flame.

As for the Ghost Rider, it managed to beat out more than ninety cars in the qualifying round—a mile-and-a-half obstacle course on the California Speedway in Fontana. But that was its high-water mark. On the day of the Grand Challenge, standing at the starting line in Barstow, half delirious with adrenaline and fatigue, Levandowski forgot to turn on the stability program. When the gun went off, the bike sputtered forward, rolled three feet, and fell over.

“That was a dark day,” Levandowski says. It took him a while to get over it—at least by his hyperactive standards. “I think I took, like, four days off,” he told me. “And then I was like, Hey, I’m not done yet! I need to go fix this!” DARPA apparently had the same thought. Three months later, the agency announced a second Grand Challenge for the following October, doubling the prize money to two million dollars. To win, the teams would have to address a daunting list of failures and shortcomings, from fried hard drives to faulty satellite equipment. But the underlying issue was always the same: as Joshua Davis later wrote in Wired, the robots just weren’t smart enough. In the wrong light, they couldn’t tell a bush from a boulder, a shadow from a solid object. They reduced the world to a giant marble maze, then got caught in the thickets between holes. They needed to raise their I.Q.

In the early nineties, Dean Pomerleau, a roboticist at Carnegie Mellon, had hit upon an unusually efficient way to do this: he let his car teach itself. Pomerleau equipped the computer in his minivan with artificial neural networks, modelled on those in the brain. As he drove around Pittsburgh, they kept track of his driving decisions, gathering statistics and formulating their own rules of the road. “When we started, the car was going about two to four miles an hour along a path through a park—you could ride a tricycle faster,” Pomerleau told me. “By the end, it was going fifty-five miles per hour on highways.” In 1996, the car steered itself from Washington, D.C., to San Diego with only minimal intervention—nearly four times as far as Ernst Dickmanns’s cars had gone a year earlier. “No Hands Across America,” Pomerleau called it.

Machine learning is an idea nearly as old as computer science—Alan Turing, one of the fathers of the field, considered it the essence of artificial intelligence. It’s often the fastest way for a computer to learn a complex behavior, but it has its drawbacks. A self-taught car can come to some strange conclusions. It may confuse the shadow of a tree for the edge of the road, or reflected headlights for lane markers. It may decide that a bag floating across a road is a solid object and swerve to avoid it. It’s like a baby in a stroller, deducing the world from the faces and storefronts that flicker by. It’s hard to know what it knows. “Neural networks are like black boxes,” Pomerleau says. “That makes people nervous, particularly when they’re controlling a two-ton vehicle.”

Computers, like children, are more often taught by rote. They’re given thousands of rules and bits of data to memorize—If X happens, do Y; avoid big rocks—then sent out to test them by trial and error. This is slow, painstaking work, but it’s easier to predict and refine than machine learning. The trick, as in any educational system, is to combine the two in proper measure. Too much rote learning can make for a plodding machine. Too much experiential learning can make for blind spots and caprice. The roughest roads in the Grand Challenge were often the easiest to navigate, because they had clear paths and well-defined shoulders. It was on the open, sandy trails that the cars tended to go crazy. “Put too much intelligence into a car and it becomes creative,” Sebastian Thrun told me.

The second Grand Challenge put these two approaches to the test. Nearly two hundred teams signed up for the race, but the top contenders were clear from the start: Carnegie Mellon and Stanford. The C.M.U. team was led by the legendary roboticist William (Red) Whittaker. (Pomerleau had left the university by then to start his own firm.) A burly, mortar-headed ex-marine, Whittaker specialized in machines for remote and dangerous locations. His robots had crawled over Antarctic ice fields and active volcanoes, and inspected the damaged nuclear reactors at Three Mile Island and Chernobyl. Seconded by a brilliant young engineer named Chris Urmson, Whittaker approached the race as a military operation, best won by overwhelming force. His team spent twenty-eight days laser-scanning the Mojave to create a computer model of its topography; then they combined those scans with satellite data to help identify obstacles. “People don’t count those who died trying,” he later told me.

The Stanford team was led by Thrun. He hadn’t taken part in the first race, when he was still just a junior faculty member at C.M.U. But by the following summer he had accepted an endowed professorship in Palo Alto. When DARPA announced the second race, he heard about it from one of his Ph.D. students, Mike Montemerlo. “His assessment of whether we should do it was no, but his body and his eyes and everything about him said yes,” Thrun recalls. “So he dragged me into it.” The contest would be a study in opposites: Thrun the suave cosmopolitan; Whittaker the blustering field marshal. Carnegie Mellon with its two military vehicles, Sandstorm and Highlander; Stanford with its puny Volkswagen Touareg, nicknamed Stanley.

It was an even match. Both teams used similar sensors and software, but Thrun and Montemerlo concentrated more heavily on machine learning. “It was our secret weapon,” Thrun told me. Rather than program the car with models of the rocks and bushes it should avoid, Thrun and Montemerlo simply drove it down the middle of a desert road. The lasers on the roof scanned the area around the car, while the camera looked farther ahead. By analyzing this data, the computer learned to identify the flat parts as road and the bumpy parts as shoulders. It also compared its camera images with its laser scans, so that it could tell what flat terrain looked like from a distance—and therefore drive a lot faster. “Every day it was the same,” Thrun recalls. “We would go out, drive for twenty minutes, realize there was some software bug, then sit there for four hours reprogramming and try again. We did that for four months.” When they started, one out of every eight pixels that the computer labelled as an obstacle was nothing of the sort. By the time they were done, the error rate had dropped to one in fifty thousand.

On the day of the race, two hours before start time, DARPA sent out the G.P.S. coördinates for the course. It was even harder than the first time: more turns, narrower lanes, three tunnels, and a mountain pass. Carnegie Mellon, with two cars to Stanford’s one, decided to play it safe. They had Highlander run at a fast clip—more than twenty miles an hour on average—while Sandstorm hung back a little. The difference was enough to cost them the race. When Highlander began to lose power because of a pinched fuel line, Stanley moved ahead. By the time it crossed the finish line, six hours and fifty-three minutes after it started, it was more than ten minutes ahead of Sandstorm and more than twenty minutes ahead of Highlander.

It was a triumph of the underdog, of brain over brawn. But less for Stanford than for the field as a whole. Five cars finished the hundred-and-thirty-two-mile course; more than twenty cars went farther than the winner had in 2004. In one year, they’d made more progress than DARPA’s contractors had in twenty. “You had these crazy people who didn’t know how hard it was,” Thrun told me. “They said, ‘Look, I have a car, I have a computer, and I need a million bucks.’ So they were doing things in their home shops, putting something together that had never been done in robotics before, and some were insanely impressive.” A team of students from Palos Verdes High School in California, led by a seventeen-year-old named Chris Seide, built a self-driving “Doom Buggy” that, Thrun recalls, could change lanes and stop at stop signs. A Ford S.U.V. programmed by some insurance-company employees from Louisiana finished just thirty-seven minutes behind Stanley. Their lead programmer had lifted his preliminary algorithms from textbooks on video-game design.

“When you look back at that first Grand Challenge, we were in the Stone Age compared to where we are now,” Levandowski told me. His motorcycle embodied that evolution. Although it never made it out of the semifinals of the second race—tripped up by some wooden boards—the Ghost Rider had become, in its way, a marvel of engineering, beating out seventy-eight four-wheeled competitors. Two years later, the Smithsonian added the motorcycle to its collection; a year after that, it added Stanley as well. By then, Thrun and Levandowski were both working for Google.

The driverless-car project occupies a lofty, garagelike space in suburban Mountain View. It’s part of a sprawling campus built by Silicon Graphics in the early nineties and repurposed by Google, the conquering army, a decade later. Like a lot of high-tech offices, it’s a mixture of the whimsical and the workaholic—candy-colored sheet metal over a sprung-steel chassis. There’s a Foosball table in the lobby, exercise balls in the sitting room, and a row of what look like clown bicycles parked out front, free for the taking. When you walk in, the first things you notice are the wacky tchotchkes on the desks: Smurfs, “Star Wars” toys, Rube Goldberg devices. The next things you notice are the desks: row after row after row, each with someone staring hard at a screen.

It had taken me two years to gain access to this place, and then only with a staff member shadowing my every step. Google guards its secrets more jealously than most. At the gourmet cafeterias that dot the campus, signs warn against “tailgaters”—corporate spies who might slink in behind an employee before the door swings shut. Once inside, though, the atmosphere shifts from vigilance to an almost missionary zeal. “We want to fundamentally change the world with this,” Sergey Brin, the co-founder of Google, told me.

Brin was dressed in a charcoal hoodie, baggy pants, and sneakers. His scruffy beard and flat, piercing gaze gave him a Rasputinish quality, dulled somewhat by his Google Glass eyewear. At one point, he asked if I’d like to try the glasses on. When I’d positioned the miniature projector in front of my right eye, a single line of text floated poignantly into view: “3:51 P.M. It’s okay.”

“As you look outside, and walk through parking lots and past multilane roads, the transportation infrastructure dominates,” Brin said. “It’s a huge tax on the land.” Most cars are used only for an hour or two a day, he said. The rest of the time, they’re parked on the street or in driveways and garages. But if cars could drive themselves, there would be no need for most people to own them. A fleet of vehicles could operate as a personalized public-transportation system, picking people up and dropping them off independently, waiting at parking lots between calls. They’d be cheaper and more efficient than taxis—by some calculations, they’d use half the fuel and a fifth the road space of ordinary cars—and far more flexible than buses or subways. Streets would clear, highways shrink, parking lots turn to parkland. “We’re not trying to fit into an existing business model,” Brin said. “We are just on such a different planet.”

When Thrun and Levandowski first came to Google, in 2007, they were given a simpler task: to create a virtual map of the country. The idea came from Larry Page, the company’s other co-founder. Five years earlier, Page had strapped a video camera on his car and taken several hours of footage around the Bay Area. He’d then sent it to Marc Levoy, a computer-graphics expert at Stanford, who created a program that could paste such footage together to show an entire streetscape. Google engineers went on to jury-rig some vans with G.P.S. and rooftop cameras that could shoot in every direction. Eventually, they were able to launch a system that could show three-hundred-and-sixty-degree panoramas for any address. But the equipment was unreliable. When Thrun and Levandowski came on board, they helped the team retool and reprogram. Then they equipped a hundred cars and sent them all over the United States.

Google Street View has since spread to more than a hundred countries. It’s both a practical tool and a kind of magic trick—a spyglass onto distant worlds. To Levandowski, though, it was just a start. The same data, he argued, could be used to make digital maps more accurate than those based on G.P.S. data, which Google had been leasing from companies like NAVTEQ. The street and exit names could be drawn straight from photographs, for instance, rather than faulty government records. This sounded simple enough but proved to be fiendishly complicated. Street View mostly covered urban areas, but Google Maps had to be comprehensive: every logging road logged on a computer, every gravel drive driven down. Over the next two years, Levandowski shuttled back and forth to Hyderabad, India, to train more than two thousand data processors to create new maps and fix old ones. When Apple’s new mapping software failed so spectacularly a year ago, he knew exactly why. By then, his team had spent five years entering several million corrections a day.

Street View and Maps were logical extensions of a Google search. They showed you where to locate the things you’d found. What was missing was a way to get there. Thrun, despite his victory in the second Grand Challenge, didn’t think that driverless cars could work on surface streets—there were just too many variables. “I would have told you then that there is no way on earth we can drive safely,” he says. “All of us were in denial that this could be done.” Then, in February of 2008, Levandowski got a call from a producer of “Prototype This!,” a series on the Discovery Channel. Would he be interested in building a self-driving pizza delivery car? Within five weeks, he and a team of fellow Berkeley graduates and other engineers had retrofitted a Prius for the purpose. They patched together a guidance system and persuaded the California Highway Patrol to let the car cross the Bay Bridge—from San Francisco to Treasure Island. It would be the first time an unmanned car had driven legally on American streets.

On the day of the filming, the city looked as if it were under martial law. The lower level of the bridge was closed to regular traffic, and eight police cruisers and eight motorcycle cops were assigned to accompany the Prius over it. “Obama was there the week before and he had a smaller escort,” Levandowski recalls. The car made its way through downtown and crossed the bridge in fine form, only to wedge itself against a concrete wall on the far side. Still, it gave Google the nudge that it needed. Within a few months, Page and Brin had called Thrun to green-light a driverless-car project. “They didn’t even talk about budget,” Thrun says. “They just asked how many people I needed and how to find them. I said, ‘I know exactly who they are.’ ”

Every Monday at eleven-thirty, the lead engineers for the Google car project meet for a status update. They mostly cleave to a familiar Silicon Valley demographic—white, male, thirty to forty years old—but they come from all over the world. I counted members from Belgium, Holland, Canada, New Zealand, France, Germany, China, and Russia at one sitting. Thrun began by cherry-picking the top talent from the Grand Challenges: Chris Urmson was hired to develop the software, Levandowski the hardware, Mike Montemerlo the digital maps. (Urmson now directs the project, while Thrun has shifted his attention to Udacity, an online education company that he co-founded two years ago.) Then they branched out to prodigies of other sorts: lawyers, laser designers, interface gurus—anyone, at first, except automotive engineers. “We hired a new breed,” Thrun told me. People at Google X had a habit of saying that So-and-So on the team was the smartest person they’d ever met, till the virtuous circle closed and almost everyone had been singled out by someone else. As Levandowski said of Thrun, “He thinks at a hundred miles an hour. I like to think at ninety.”

When I walked in one morning, the team was slouched around a conference table in T-shirts and jeans, discussing the difference between the Gregorian and the Julian calendar. The subtext, as usual, was time. Google’s goal isn’t to create a glorified concept car—a flashy idea that will never make it to the street—but a polished commercial product. That means real deadlines and continual tests and redesigns. The main topic for much of that morning was the user interface. How aggressive should the warning sounds be? How many pedestrians should the screen show? In one version, a jaywalker appeared as a red dot outlined in white. “I really don’t like that,” Urmson said. “It looks like a real-estate sign.” The Dutch designer nodded and promised an alternative for the next round. Every week, several dozen Google volunteers test-drive the cars and fill out user surveys. “In God we trust,” the company faithful like to say. “Everyone else, bring data.”

In the beginning, Brin and Page presented Thrun’s team with a series of DARPA-like challenges. They managed the first in less than a year: to drive a hundred thousand miles on public roads. Then the stakes went up. Like boys plotting a scavenger hunt, Brin and Page pieced together ten itineraries of a hundred miles each. The roads wound through every part of the Bay Area—from the leafy lanes of Menlo Park to the switchbacks of Lombard Street. If the driver took the wheel or tapped the brakes even once, the trip was disqualified. “I remember thinking, How can you possibly do that?” Urmson told me. “It’s hard to game driving through the middle of San Francisco.”

They started the project with Levandowski’s pizza car and Stanford’s open-source software. But they soon found that they had to rebuild from scratch: the car’s sensors were already outdated, the software just glitchy enough to be useless. The DARPA cars hadn’t concerned themselves with passenger comfort. They just went from point A to point B as efficiently as possible. To smooth out the ride, Thrun and Urmson had to make a deep study of the physics of driving. How does the plane of a road change as it goes around a curve? How do tire drag and deformation affect steering? Braking for a light seems simple enough, but good drivers don’t apply steady pressure, as a computer might. They build it gradually, hold it for a moment, then back off again.

For complicated moves like that, Thrun’s team often started with machine learning, then reinforced it with rule-based programming—a superego to control the id. They had the car teach itself to read street signs, for instance, but they underscored that knowledge with specific instructions: “STOP” means stop. If the car still had trouble, they’d download the sensor data, replay it on the computer, and fine-tune the response. Other times, they’d run simulations based on accidents documented by the National Highway Traffic Safety Administration. A mattress falls from the back of a truck. Should the car swerve to avoid it or plow ahead? How much advance warning does it need? What if a cat runs into the road? A deer? A child? These were moral questions as well as mechanical ones, and engineers had never had to answer them before. The DARPA cars didn’t even bother to distinguish between road signs and pedestrians—or “organics,” as engineers sometimes call them. They still thought like machines.

Four-way stops were a good example. Most drivers don’t just sit and wait their turn. They nose into the intersection, nudging ahead while the previous car is still passing through. The Google car didn’t do that. Being a law-abiding robot, it waited until the crossing was completely clear—and promptly lost its place in line. “The nudging is a kind of communication,” Thrun told me. “It tells people that it’s your turn. The same thing with lane changes: if you start to pull into a gap and the driver in that lane moves forward, he’s giving you a clear no. If he pulls back, it’s a yes. The car has to learn that language.”

It took the team a year and a half to master Page and Brin’s ten hundred-mile road trips. The first one ran from Monterey to Cambria, along the cliffs of Highway 1. “I was in the back seat, screaming like a little girl,” Levandowski told me. One of the last started in Mountain View, went east across the Dumbarton Bridge to Union City, back west across the bay to San Mateo, north on 101, east over the Bay Bridge to Oakland, north through Berkeley and Richmond, back west across the bay to San Rafael, south to the mazy streets of the Tiburon Peninsula, so narrow that they had to tuck in the side mirrors, and over the Golden Gate Bridge to downtown San Francisco. When they finally arrived, past midnight, they celebrated with a bottle of champagne. Now they just had to design a system that could do the same thing in any city, in all kinds of weather, with no chance of a do-over. Really, they’d just begun.

These days, Levandowski and the other engineers divide their time between two models: the Prius, which is used to test new sensors and software; and the Lexus, which offers a more refined but limited ride. (The Prius can drive on surface streets; the Lexus only on highways.) As the cars have evolved, they’ve sprouted appendages and lost them again, like vat-grown creatures in a science-fiction movie. The cameras and radar are now tucked behind sheet metal and glass, the laser turret reduced from a highway cone to a sand pail. Everything is smaller, sleeker, and more powerful than before, but there’s still no mistaking the cars. When Levandowski picked me up or dropped me off near the Berkeley campus on his commute, students would look up from their laptops and squeal, then run over to take snapshots of the car with their phones. It was their version of the Oscar Mayer Wienermobile.

Still, my first thought on settling into the Lexus was how ordinary things looked. Google’s experiments had left no scars, no signs of cybernetic alteration. The interior could have passed for that of any luxury car: burl-wood and leather, brushed metal and Bose speakers. There was a screen in the center of the dashboard for digital maps; another above it for messages from the computer. The steering wheel had an On button to the left and an Off button to the right, lit a soft, fibre-optic green and red. But there was nothing to betray their exotic purpose. The only jarring element was the big red knob between the seats. “That’s the master kill switch,” Levandowski said. “We’ve never actually used it.”

Levandowski kept a laptop open beside him as we rode. Its screen showed a graphic view of the data flowing in from the sensors: a Tron-like world of neon objects drifting and darting on a wireframe nightscape. Each sensor offered a different perspective on the world. The laser provided three-dimensional depth: its sixty-four beams spun around ten times per second, scanning 1.3 million points in concentric waves that began eight feet from the car. It could spot a fourteen-inch object a hundred and sixty feet away. The radar had twice that range but nowhere near the precision. The camera was good at identifying road signs, turn signals, colors, and lights. All three views were combined and color-coded by a computer in the trunk, then overlaid by the digital maps and Street Views that Google had already collected. The result was a road atlas like no other: a simulacrum of the world.

I was thinking about all this as the Lexus headed south from Berkeley down Highway 24. What I wasn’t thinking about was my safety. At first, it was a little alarming to see the steering wheel turn by itself, but that soon passed. The car clearly knew what it was doing. When the driver beside us drifted into our lane, the Lexus drifted the other way, keeping its distance. When the driver ahead hit his brakes, the Lexus was already slowing down. Its sensors could see so far in every direction that it saw traffic patterns long before we did. The effect was almost courtly: drawing back to let others pass, gliding into gaps, keeping pace without strain, like a dancer in a quadrille.

The Prius was an even more capable car, but also a rougher ride. When I rode in it with Dmitri Dolgov, the team’s lead programmer, it had an occasional lapse in judgment: tailgating a truck as it came down an exit ramp; rushing late through a yellow light. In those cases, Dolgov made a note on his laptop. By that night, he’d have adjusted the algorithm and run simulations till the computer got it right.

The Google car has now driven more than half a million miles without causing an accident—about twice as far as the average American driver goes before crashing. Of course, the computer has always had a human driver to take over in tight spots. Left to its own devices, Thrun says, it could go only about fifty thousand miles on freeways without a major mistake. Google calls this the dog-food stage: not quite fit for human consumption. “The risk is too high,” Thrun says. “You would never accept it.” The car has trouble in the rain, for instance, when its lasers bounce off shiny surfaces. (The first drops call forth a small icon of a cloud onscreen and a voice warning that auto-drive will soon disengage.) It can’t tell wet concrete from dry or fresh asphalt from firm. It can’t hear a traffic cop’s whistle or follow hand signals.

And yet, for each of its failings, the car has a corresponding strength. It never gets drowsy or distracted, never wonders who has the right-of-way. It knows every turn, tree, and streetlight ahead in precise, three-dimensional detail. Dolgov was riding through a wooded area one night when the car suddenly slowed to a crawl. “I was thinking, What the hell? It must be a bug,” he told me. “Then we noticed the deer walking along the shoulder.” The car, unlike its riders, could see in the dark. Within a year, Thrun added, it should be safe for a hundred thousand miles.

The real question is who will build it. Google is a software firm, not a car company. It would rather sell its programs and sensors to Ford or GM than build its own cars. The companies could then repackage the system as their own, as they do with G.P.S. units from NAVTEQ or TomTom. The difference is that the car companies have never bothered to make their own maps, but they’ve spent decades working on driverless cars. General Motors sponsored Carnegie Mellon’s DARPA races and has a large testing facility for driverless cars outside of Detroit. Toyota opened a nine-acre laboratory and “simulated urban environment” for self-driving cars last November, at the foot of Mt. Fuji. But aside from Nissan, which recently announced that it would sell fully autonomous cars by 2020, the manufacturers are much more pessimistic about the technology. “It’ll happen, but it’s a long way out,” John Capp, General Motors’ director of electrical, controls, and active safety research, told me. “It’s one thing to do a demonstration—‘Look, Ma, no hands!’ But I’m talking about real production variance and systems we’re confident in. Not some circus vehicle.”

When I went to visit the most recent International Auto Show in New York, the exhibits were notably silent about autonomous driving. That’s not to say that it wasn’t on display. Outside the convention center, Jeep had set up an obstacle course for its new Wrangler, including a row of logs to drive over and a miniature hill to climb. When I went down the hill with a Jeep sales rep, he kept telling me to take my foot off the brake. The car was equipped with “descent control,” he explained, but, like the other exhibitors, he avoided terms like “self-driving.” “We don’t even include it in our vocabulary,” Alan Hall, a communications manager at Ford, told me. “Our view of the future is that the driver remains in control of the vehicle. He is the captain of the ship.”

This was a little disingenuous—necessity passing as principle. The car companies can’t do full autonomy yet, so they do it piece by piece. Every decade or so, they introduce another bit of automation, another task gently lifted from the captain’s hands: power steering in the nineteen-fifties, cruise control as a standard feature in the seventies, antilock brakes in the eighties, electronic stability control in the nineties, the first self-parking cars in the two-thousands. The latest models can detect lane lines and steer themselves to stay within them. They can keep a steady distance from the car ahead, braking to a stop if necessary. They have night vision, blind-spot detection, and stereo cameras that can identify pedestrians. Yet the over-all approach hasn’t changed. As Levandowski puts it, “They want to make cars that make drivers better. We want to make cars that are better than drivers.”

Along with Nissan, Toyota and Mercedes are probably closest to developing systems like Google’s. Yet they hesitate to introduce them for different reasons. Toyota’s customers are a conservative bunch, less concerned with style than with comfort. “They tend to have a fairly long adoption curve,” Jim Pisz, the corporate manager of Toyota’s North American business strategy, told me. “It was only five years ago that we eliminated cassette players.” The company has been too far ahead of the curve before. In 2005, when Toyota introduced the world’s first self-parking car, it was finicky and slow to maneuver, as well as expensive. “We need to build incremental levels of trust,” Pisz said.

Mercedes has a knottier problem. It has a reputation for fancy electronics and a long history of innovation. Its newest experimental car can maneuver in traffic, drive on surface streets, and track obstacles with cameras and radar much as Google’s do. But Mercedes builds cars for people who love to drive, and who pay a stiff premium for the privilege. Taking the steering wheel out of their hands would seem to defeat the purpose—as would sticking a laser turret on a sculpted chassis. “Apart from the reliability factor, which can easily become a nightmare, it is not nice to look at,” Ralf Herrtwich, Mercedes’s director of driver assistance and chassis systems, told me. “One of my designers said, ‘Ralf, if you ever suggest building such a thing on top of one of our cars, I’ll throw you out of this company.’ ”

Even if the new components could be made invisible, Herrtwich says, he worries about separating people from the driving process. The Google engineers like to compare driverless cars to airplanes on autopilot, but pilots are trained to stay alert and take over in case the computer fails. Who will do the same for drivers? “This one-shot, winner-take-all approach, it’s perhaps not a wise thing to do,” Herrtwich says. Then again alert, fully engaged drivers are already becoming a thing of the past. More than half of all eighteen-to-twenty-four-year-olds admit to texting while driving, and more than eighty per cent drive while on the phone. Hands-free driving should seem like second nature to them: they’ve been doing it all along.

One afternoon, not long after the car show, I got an unsettling demonstration of this from engineers at Volvo. I was sitting behind the wheel of one of their S60 sedans in the parking lot of the company’s American headquarters in Rockleigh, New Jersey. About a hundred yards ahead, they’d placed a life-size figure of a boy. He was wearing khaki pants and a white T-shirt and looked to be about six years old. My job was to try to run him over.

Volvo has less faith in drivers than most companies do. Since the seventies, it has kept a full-time forensics team on call at its Swedish headquarters, in Gothenburg. Whenever a Volvo gets into an accident within a sixty-mile radius, the team races to the scene with local police to assess the wreckage and injuries. Four decades of such research have given Volvo engineers a visceral sense of all that can go wrong in a car, and a database of more than forty thousand accidents to draw on for their designs. As a result, the chances of getting hurt in a Volvo have dropped from more than ten per cent to less than three per cent over the life of a car. The company says this is just a start. “Our vision is that no one is killed or injured in a Volvo by 2020,” it declared three years ago. “Ultimately, that means designing cars that do not crash.”

Most accidents are caused by what Volvo calls the four D’s: distraction, drowsiness, drunkenness, and driver error. The company’s newest safety systems try to address each of these. To keep the driver alert, they use cameras, lasers, and radar to monitor the car’s progress. If the car crosses a lane line without a signal from the blinker, a chime sounds. If a pattern emerges, the dashboard flashes a steaming coffee cup and the words “Time for a break.” To instill better habits, the car rates the driver’s attentiveness as it goes, with bars like those on a cell phone. (Mercedes goes a step further: its advanced cruise control won’t work unless at least one of the driver’s hands is on the wheel.) In Europe, some Volvos even come with Breathalyzer systems, to discourage drunken driving. When all else fails, the cars take preëmptive action: tightening the seat belts, charging the brakes for maximum traction, and, at the last moment, stopping the car.

This was the system that I was putting to the test in the parking lot. Adam Kopstein, the manager of Volvo’s automotive safety and compliance office, was a man of crisp statistics and nearly Scandinavian scruples. So it was a little unnerving to hear him urge me to go faster. I’d spent the first fifteen minutes trying to crash into an inflatable car, keeping to a sedate twenty miles an hour. Three-quarters of all accidents occur at this speed, and the Volvo handled it with ease. But Kopstein was looking for a sterner challenge. “Go ahead and hit the gas,” he said. “You’re not going to hurt anyone.”

I did as instructed. The boy was just a mannequin, after all, stuffed with reflective material to simulate the water in a human body. First a camera behind the windshield would identify him as a pedestrian. Then radar from behind the grille would bounce off his reflective innards and deduce the distance to impact. “Some people scream,” Kopstein said. “Others just can’t do it. It’s so unnatural.” As the car sped up—fifteen, twenty, thirty-five miles an hour—the warning chime sounded, but I kept my foot off the brake. Then, suddenly, the car ground to a halt, juddering toward the boy with a final double lurch. It came to a stop with about five inches to spare.

Since 2010, Volvos equipped with a safety system have had twenty-seven per cent fewer property-damage claims than those without it, according to a study by the Insurance Institute for Highway Safety. The system goes out of its way to leave the driver in charge, braking only in extreme circumstances and ceding control at the tap of a pedal or a turn of the wheel. Still, the car sometimes gets confused. Later that afternoon, I took the Volvo out for a test drive on the Palisades Parkway. I contented myself with steering, while the car took care of braking and acceleration. Like Levandowski’s Lexus, it quickly earned my trust: keeping pace with highway traffic, braking smoothly at lights. Then something strange happened. I’d circled back to the Volvo headquarters and was about to turn into the parking lot when the car suddenly surged forward, accelerating into the curve.

The incident lasted only a moment—when I hit the brakes, the system disengaged—but it was a little alarming. Kopstein later guessed that the car thought it was still on the highway, in cruise control. For most of the drive, I’d been following Kopstein’s Volvo, but when that car turned into the parking lot, my car saw a clear road ahead. That’s when it sped up, toward what it thought was the speed limit: fifty miles an hour.

To some drivers, this may sound worse than the four D’s. Distraction and drowsiness we can control, but a peculiar horror attaches to the thought of death by computer. The screen freezes or power fails; the sensors jam or misread a sign; the car squeals to a stop on the highway or plows headlong into oncoming traffic. “We’re all fairly tolerant of cell phones and laptops not working,” GM’s John Capp told me. “But you’re not relying on your cell phone or laptop to keep you alive.”

Toyota got a taste of such calamities in 2009, when some drivers began to complain that their cars would accelerate of their own accord—sometimes up to a hundred miles an hour. The news caused panic among Toyota owners: the cars were accused of causing thirty-nine deaths. But this proved to be largely fictional. A ten-month study by NASA and the National Highway Traffic Safety Administration found that most of the incidents were caused by driver error or roving floor mats, and only a few by sticky gas pedals. By then, Toyota had recalled some ten million cars and paid more than a billion dollars in legal settlements. “Frankly, that was an indicator that we need to go slow,” Jim Pisz told me. “Deliberately slow.”

An automated highway could also be a prime target for cyberterrorism. Last year, DARPA funded a pair of well-known hackers, Charlie Miller and Chris Valasek, to see how vulnerable existing cars might be. In August, Miller presented some of their findings at the annual Defcon hackers conference in Las Vegas. By sending commands from their laptop, they’d been able to make a Toyota Prius blast its horn, jerk the wheel from the driver’s hands, and brake violently at eighty miles an hour. True, Miller and Valasek had to use a cable to patch into the car’s maintenance port. But a team at the University of California, San Diego, led by the computer scientist Stefan Savage, has shown that similar instructions could be sent wirelessly, through systems as innocuous as a Bluetooth receiver. “Existing technology is not as robust as we think it is,” Levandowski told me.

Google claims to have answers to all these threats. Its engineers know that a driverless car will have to be nearly perfect to be allowed on the road. “You have to get to what the industry calls the ‘six sigma’ level—three defects per million,” Ken Goldberg, the industrial engineer at Berkeley, told me. “Ninety-five per cent just isn’t good enough.” Aside from its test drives and simulations, Google has encircled its software with firewalls, backup systems, and redundant power supplies. Its diagnostic programs run thousands of internal checks per second, searching for system errors and anomalies, monitoring its engine and brakes, and continually recalculating its route and lane position. Computers, unlike people, never tire of self-assessment. “We want it to fail gracefully,” Dolgov told me. “When it shuts down, we want it to do something reasonable, like slow down and go on the shoulder and turn on the blinkers.”

Still, sooner or later, a driverless car will kill someone. A circuit will fail, a firewall collapse, and that one defect in three hundred thousand will send a car plunging across a lane or into a tree. “There will be crashes and lawsuits,” Dean Pomerleau said. “And because the car companies have deep pockets they will be targets, regardless of whether they’re at fault or not. It doesn’t take many fifty- or hundred-million-dollar jury decisions to put a big damper on this technology.” Even an invention as benign as the air bag took decades to make it into American cars, Pomerleau points out. “I used to say that autonomous vehicles are fifteen or twenty years out. That was twenty years ago. We still don’t have them, and I still think they’re ten years out.”

If driverless cars were once held back by their technology, then by ideas, the limiting factor now is the law. Strictly speaking, the Google car is already legal: drivers must have licenses; no one said anything about computers. But the company knows that won’t hold up in court. It wants the cars to be regulated just like human drivers. For the past two years, Levandowski has spent a good deal of his time flying around the country lobbying legislatures to support the technology. First Nevada, then Florida, California, and the District of Columbia have legalized driverless cars, provided that they’re safe and fully insured. But other states have approached the issue more skeptically. The bills proposed by Michigan and Wisconsin, for instance, both treat driverless cars as experimental technology, legal only within narrow limits.

Much remains to be defined. How should the cars be tested? What’s their proper speed and spacing? How much warning do drivers need before taking the wheel? Who’s responsible when things go wrong? Google wants to leave the specifics to motor-vehicle departments and insurers. (Since premiums are based on statistical risk, they should go down for driverless cars.) But the car companies argue that this leaves them too vulnerable. “Their original position was ‘We shouldn’t rush this. It’s not ready for prime time. It shouldn’t be legalized,’ ” Alex Padilla, the state senator who sponsored the California bill, told me. But their real goal, he believes, was just to buy time to catch up. “It became clear to me that the interest here was a race to the market. And everybody’s in the race.” The question is how fast should they go.

At the tech meeting I attended, Levandowski showed the team a video of Google’s newest laser, slated to be installed within the year. It had more than twice the range of previous models—eleven hundred feet instead of two hundred and sixty—and thirty times the resolution. At three hundred feet, it could spot a metal plate less than two inches thick. The laser would be about the size of a coffee mug, he told me, and cost around ten thousand dollars—seventy thousand less than the current model.

“Cost is the least of my worries,” Sergey Brin had told me earlier. “Driving the price of technology down is like”—he snapped his fingers. “You just wait a month. It’s not fundamentally expensive.” Brin and his engineers are motivated by more personal concerns: Brin’s parents are in their late seventies and starting to get unsteady behind the wheel. Thrun lost his best friend to a car accident, and Urmson has children just a few years shy of driving age. Like everyone else at Google, they know the statistics: worldwide, car accidents kill 1.24 million people a year, and injure another fifty million.

For Levandowski, the stakes first became clear three years ago. His fiancée, Stefanie Olsen, was nine months pregnant at the time. One afternoon, she had just crossed the Golden Gate Bridge on her way to visit a friend in Marin County when the car ahead of her abruptly stopped. Olsen slammed on her brakes and skidded to a halt, but the driver behind her wasn’t so quick. He collided into her Prius at more than thirty miles an hour, pile-driving it into the car ahead. “It was like a tin can,” Olsen told me. “The car was totalled and I was accordioned in there.” Thanks to her seat belt, she escaped unharmed, as did her baby. But when Alex was born he had a small patch of white hair on the back of his head.

“That accident never should have happened,” Levandowski told me. If the car behind Olsen had been self-driving, it would have seen the obstruction three cars ahead. It would have calculated the distance to impact, scanned the neighboring lanes, realized it was boxed in, and hit the brakes, all within a tenth of a second. The Google car drives more defensively than people do: it tailgates five times less, rarely coming within two seconds of the car ahead. Under the circumstances, Levandowski says, our fear of driverless cars is increasingly irrational. “Once you make the car better than the driver, it’s almost irresponsible to have him there,” he says. “Every year that we delay this, more people die.”

After a long day in Mountain View, the drive home to Berkeley can be a challenge. Levandowski’s mind, accustomed to pinwheeling in half a dozen directions, can have trouble focussing on the two-ton hunks of metal hurtling around him. “People should be happy when I’m on automatic mode,” he told me, as we headed home one night. He leaned back in his seat and put his hands behind his head, as if taking in the seaside sun. He looked like the vintage illustrations of driverless cars on his laptop: “Highways made safe by electricity!”

The reality was so close that he could envision each step: The first cars coming to market in five to ten years. Their numbers few at first—strange beasts on a new continent—relying on sensors to get the lay of the land, mapping territory street by street. Then spreading, multiplying, sharing maps and road conditions, accident alerts and traffic updates; moving in packs, drafting off one another to save fuel, dropping off passengers and picking them up, just as Brin had imagined. For once it didn’t seem like a fantasy. “If you look at my track record, I usually do something for two years and then I want to leave,” Levandowski said. “I’m a first-mile kind of guy—the guy who rushes the beach at Normandy, then lets other people fortify it. But I want to see this through. What we’ve done so far is cool; it’s scientifically interesting; but it hasn’t changed people’s lives.”

When we arrived at his house, his family was waiting. “I’m a bull!” his three-year-old, Alex, roared as he ran up to greet us. We acted suitably impressed, then wondered why a bull would have long whiskers and a red nose. “He was a kitten a little while ago,” his mother whispered. A former freelance reporter for the Times and CNET, Olsen was writing a techno-thriller set in Silicon Valley. She worked from home now, and had been cautious about driving since the accident. Still, two weeks earlier, Levandowski had taken her and Alex on their first ride in the Google car. She was a little nervous at first, she admitted, but Alex had wondered what all the fuss was about. “He thinks everything’s a robot,” Levandowski said.

While Olsen set the table, Levandowski gave me a brief tour of their place: an Arts and Crafts house from 1909, once home to a hippie commune led by Tom Hayden. “You can still see the burn marks on the living-room floor,” he said. For a registered Republican and a millionaire many times over, it was a quirky, modest choice. Levandowski probably could have afforded that stateroom in a 747 by now, and made good use of it. Last year alone, he flew more than a hundred thousand miles in his lobbying efforts. There was just one problem, he said. It was irrational, he knew. It went against all good sense and a raft of statistics, but he couldn’t help it. He was afraid of flying.

Source: http://www.newyorker.com/reporting/2013/11/25/131125fa_fact_bilger?currentPage=all

Googles latest chapter for the self-driving car: mastering city street driving

Jaywalking pedestrians. Cars lurching out of hidden driveways. Double-parked delivery trucks blocking your lane and your view. At a busy time of day, a typical city street can leave even experienced drivers sweaty-palmed and irritable. We all dream of a world in which city centers are freed of congestion from cars circling for parking (PDF) and have fewer intersections made dangerous by distracted drivers. That’s why over the last year we’ve shifted the focus of the Google self-driving car project onto mastering city street driving.

Since our last update, we’ve logged thousands of miles on the streets of our hometown of Mountain View, Calif. A mile of city driving is much more complex than a mile of freeway driving, with hundreds of different objects moving according to different rules of the road in a small area. We’ve improved our software so it can detect hundreds of distinct objects simultaneously—pedestrians, buses, a stop sign held up by a crossing guard, or a cyclist making gestures that indicate a possible turn. A self-driving vehicle can pay attention to all of these things in a way that a human physically can’t—and it never gets tired or distracted.

Here’s a video showing how our vehicle navigates some common scenarios near the Googleplex:

As it turns out, what looks chaotic and random on a city street to the human eye is actually fairly predictable to a computer. As we’ve encountered thousands of different situations, we’ve built software models of what to expect, from the likely (a car stopping at a red light) to the unlikely (blowing through it). We still have lots of problems to solve, including teaching the car to drive more streets in Mountain View before we tackle another town, but thousands of situations on city streets that would have stumped us two years ago can now be navigated autonomously.

Our vehicles have now logged nearly 700,000 autonomous miles, and with every passing mile we’re growing more optimistic that we’re heading toward an achievable goal—a vehicle that operates fully without human intervention.

Google Launches Project Tango, a 3D Sensor-Enabled Smartphone

Google announced an experimental Android-powered smartphone with powerful 3D sensors called Project Tango on Thursday. The phone is the latest project out of Google’s Advanced Technology and Projects (ATAP) group.

„The goal of Project Tango is to give mobile devices a human-scale understanding of space and motion,“ Johnny Lee, ATAP’s technical program lead, wrote in a Google+ post announcing the project.

The 5-inch phone will run Android and be equipped a series of 3D sensors capable of taking more than a quarter of a million measurements each second. Google envisions these sensors will have a number of applications from gaming to indoor navigation.

The phone is still in early stages of development, and the first prototypes will only be available to a limited group of developers. The first 200 prototypes, which Google expects to be distributed by mid-March, will go to a group of developers hand-picked by Google.

Google says many of those first devices will go to companies focusing on creating gaming, data processing and navigation and mapping application, but some units have been set aside for „applications we haven’t thought it yet,“ Google said. Interested developers can sign up on Project Tango’s website for a chance at getting one of the early prototypes.

Project Tango, though experimental, will likely play a big role in the upcoming Google I/O Developer Conference, which will take places from June 25 to 26.

source: http://mashable.com/2014/02/20/google-project-tango/?utm_cid=mash-com-fb-main-link

 

BMW demonstriert hochautomatisiertes Fahren

BMW arbeitet an Fahrzeugen, die ohne Eingriffe des Fahrers ihr Ziel erreichen.

Wieweit BMW derzeit mit seinem „hochautomatisierten“ Fahren ist, konnten wir in einem Testfahrzeug nördlich von München ausprobieren: Unser BMW fuhr nicht nur selbstständig gerade aus, sondern überholte auch wie von Geisterhand. Wir zeigen die Testfahrt im Video und beantworten im Interview mit einem BMW-Experten die wichtigsten Fragen rund um das „automatisierte Fahren.

Im November 2013 rückte PC-WELT mit der Video-Kamera im BMW-Forschungszentrum im Nordwesten von München an: Wir filmten eine längere Ausfahrt mit einem hochautomatisiertem Testwagen, der vollgestopft mit Umgebungserfassungssensoren und leistungsfähigen Rechnern eine vorgegebene Route über die A9 und die A92 zum Münchner Flughafen und zurück fuhr. Michael Aeberhard, Teilprojektleiter Hochautomatisiertes Fahren bei der BMW Group Forschung und Technik, saß hinter dem Steuer des 5er BMW – und machte während der Fahrt mit Tempo 120 lange Zeit nichts. Wobei: Ein paar Mal musste Aeberhard doch eingreifen, aber dazu später.

Nach unserer Rückkehr am BMW-Forschungszentrum beantwortete uns Dr. Werner Huber, Leiter Fahrerassistenz und Perzeption bei der BMW Group Forschung und Technik, die wichtigsten Fragen zu technischen und juristischen Details rund um das Thema automatisiertes Fahren.

BMW zeigt selbstfahrendes Auto – Video Zum Video

Begriffsdefinition: Assistiertes, teilautomatisiertes, hochautomatisiertes und vollautomatisiertes Fahren

Was bedeutet hochautomatisiertes Fahren eigentlich? BMW unterscheidet hierzu zwischen fünf verschiedenen Stufen des Fahrens:

a) Der Fahrer fährt komplett selbstständig und ohne nennenswerte Technik-Eingriffe

b) Der Fahrer fährt selbstständig, wird aber durch Fahr- und Sicherheitsassistenten unterstützt. Hier sind ACC, Totwinkelassistent und Spurhalteassistent sowie zunehmend auch Notbrems-Assistenten als typische Beispiele zu nennen. Dieses so genannte assistierte Fahren war lange Zeit hochpreisigen Fahrzeugen aus der Kategorie 5er/7er BMW, Audi A6 oder Mercedes-Benz E- und S-Klasse vorbehalten, findet aber mittlerweile auch immer größere Verbreitung in preiswerten PKWs wie beispielsweise dem Golf VII oder dem neuen Mazda 3.

c) Der Fahrer fährt teilautomatisiert mit deutlichen Eingriffen der Technik. Ein typisches Beispiel ist die Stop-and-Go-Funktion für Staus auf der Autobahn. Doch immer noch muss der Fahrer die Hände am Lenkrad haben und das Fahrzeug führen. Diese Technik hält nun so langsam Einzug in die Autos, BMW beispielsweise führt sie Ende 2013 als kostenpflichtige Option ein. Die neue S-Klasse bietet ebenfalls Stop-and-Go.

d) Das hochautomatisierte Fahren: Hier fährt das Fahrzeug bis zu einem bestimmten Grad selbstständig, man muss ihm nur noch die Geschwindigkeit und das Ziel vorgeben. Der Fahrer kann die Hände vom Lenkrad nehmen und beispielsweise auf dem Bildschirm im Armaturenbrett seine Mails checken. Er muss aber innerhalb eines vorgegebenen Zeitraums auf ein Warnzeichen des PKWs hin jederzeit und sofort eingreifen können. Der Fahrer kontrolliert also immer noch das Fahrzeug. Das demonstrierte uns BMW erstmals am 6. Juni 2013 auf der A9 nördlich von München im durchaus dichten Verkehr. In unserem heutigen Video dreht sich alles um dieses hochautomatisierte Fahren. BMW rechnet damit, diese Technologie um das Jahr 2020 herum serienreif anbieten zu können.

e) Das vollautomatisierte Fahren: Hier kann der Fahrer im Prinzip auf der Rücksitzbank bequem sich hinlegen und etwas schlafen. Er muss seinen PKW nicht mehr überwachen. Das ist aber noch völlige Zukunftsmusik, daran ist derzeit nicht zu denken.

Ausfahrt mit einem hochautomatisiertem BMW 5er auf der Autobahn

Am 28. November 2013 zeigte uns BMW den aktuellen Stand beim hochautomatisierten Fahren. Dazu fuhren wir in einem Testfahrzeug vom BMW Forschungszentrum in München aus auf der dreispurigen Autobahn A9 zunächst Richtung Norden und dann weiter Richtung Franz-Josef-Strauß-Flughafen auf der A92.

Unser Testfahrzeug wurde von unserem Fahrer Michael Aeberhard durch den Münchner Stadtverkehr auf die Autobahn gesteuert. Insofern war bis zum Erreichen der rechten Autobahnspur alles wie bei einem normalen Auto. Das Fahrzeug benötigte einige Sekunden, bis es seine Position korrekt auf dem Überwachungs-Bildschirm anzeigte. Der Fahrer stellte im Tempomat die gewünschte Geschwindigkeit (um die 120 Stundenkilometer) und im Navigationsgerät das Ziel, nämlich Richtung Norden, ein. Und nahm dann die Hände vom Lenkrad.

Aeberhard hatte während der Fahrt reichlich Zeit um uns technische Details des Testwagens zu erklären – weil der 5er tatsächlich die meiste Zeit ohne Lenk- oder Bremseingriffe des Fahrers fuhr. Konkret heißt das: Aeberhard hatte seine beiden Hände NICHT am Lenkrad und seinen rechten Fuß weder auf dem Gas- noch auf dem Bremspedal. Unser BMW fuhr aber keinswegs stur auf der rechten Spur einfach nur geradeaus, sondern wechselte selbstständig die Spur, um langsamer fahrend Fahrzeuge, beispielsweise LKWs, zu überholen. Nach dem Überholvorgang scherte unser Testwagen dann wieder selbstständig nach rechts ein.

Computer setzt den Blinker

Der BMW zeigte ein sehr defensives Fahrverhalten. So wurde er aus Gründen der Verkehrssicherheit eben programmiert. Ein menschlicher Fahrer hätte sicherlich schneller überholt und auch kleinere Lücken im vorbei fließenden Verkehr für Überholmanöver ausgenutzt. Unser BMW ging es dagegen gemütlich an und setzte erst dann links zum Überholen eines vor uns fahrenden LKWs an, als die Lücke zwischen zwei PKWs auf der mittleren Spur wirklich sehr groß war. Der Überholvorgang erfolgte jedoch völlig selbstständig: Der Testwagen setzte den linken Blinker und zog dann nach links auf die mittlere der drei Fahrspuren auf der A9. Nachdem wir an dem LKW vorbei gezogen waren, scherte der Testwagen wieder selbstständig auf die rechte Fahrspur ein. Das machte er mehrmals während der Testfahrt.

Rechts der Überwachungsbildschirm

Rechts der Überwachungsbildschirm
© BMW

Auf dem Kontrollbildschirm sahen wir ständig blaue Rechtecke, die PKWs und LKWs um uns herum symbolisierten. Dabei wurden auch Fahrzeuge angezeigt, die sich auf Parkplätzen befanden, an denen wir vorbei fuhren. Der vorne am BMW angebrachte Laser konnte sogar einige PKWs erfassen, die vor einem LKW fuhren, der wiederum direkt vor uns fuhr. Wir konnten also mit Hilfe des Lasers sozusagen durch den LKW durchschauen und sahen auf dem Kontrollbildschirm Autos, die wir mit bloßem Auge überhaupt nicht sehen konnten. Das lag daran, dass der Laser, der wie gesagt relativ tief am vorderen Stoßfänger des Testwagens angebracht war, unter dem vor uns fahrenden LKW „durchblicken“ konnte und damit das vor dem relativ hoch gebauten LKW fahrende Auto noch erfassen konnte.

Ohne Zweifel war es beeindruckend zu sehen, wie das Auto wie von Geisterhand selbstständig überholt und wieder einschert. Der Fahrer muss das Ganze aber immer überwachen und auf ein Warnsignal hin jederzeit eingreifen können. Man kann also nicht während der Fahrt ein Nickerchen, sondern muss auf dem Fahrersitz bleiben. Nur müssen eben die Hände nicht mehr am Lenkrad sein und man muss nicht mehr die Fußpedale bedienen.

Der Kontrollbildschirm vor dem Beifahrerplatz

Der Kontrollbildschirm vor dem Beifahrerplatz. In den Ecken links und rechts oben sieht man die Bilder von der Front- und von der Heckkamera unseres Testwagens. In der Mitte des Bildschirms ist die Autobahn mit den Fahrzeugen darauf abgebildet. Und wir mitten drin.

Ein paar Mal musste Aeberhard tatsächlich eingreifen. Beispielsweise als wir vor dem Autobahnkreuz von der A9 auf die A92 wechselten. Das hätte das hochautomatisierte Fahrzeug zwar grundsätzlich auch selbst geschafft, doch gerade in diesem Moment verhinderte ein rechts neben uns fahrender LKW den Spurwechsel – hier war menschliches Eingriffen einfach nötig.

In einem anderen Fall fuhren wir rechts und ein LKW links von uns wollte auf unsere Spur wechseln, um von der Autobahn abfahren zu können. Da unser Testwagen den Abbiegewunsch des LKWs nicht erkennen konnte und mit stoischer Ruhe einfach weiterfuhr ohne den LKW einscheren zu lassen, entschloss sich unser Fahrer doch zum Eingreifen und bremste den BMW ab – im Zweifelsfall haben 40 Tonnen eben doch mehr Überzeugungskraft als 1,7 Tonnen…

Doch insgesamt verlief die Fahrt im hochautomatisiertem Fahren beeindruckend souverän. Die Zukunft kann kommen. Was bis dahin aber noch passieren muss (technisch und rechtlich), wie der aktuelle Stand der Entwicklung ist und wann Sie das erste hochautomatisierte Fahrzeug kaufen können – das alles erfahren Sie im obigen Video.

Fahrzeugausstattung

Unser Testfahrzeug mit Automatik-Getriebe war rundherum mit Sensoren bestückt, mit denen es seine Umgebung wahrnimmt. Zusätzlich zu den von den bereits erhältlichen Sicherheitsassistenten bekannten Sensoren wie Radar, Ultraschall, Surround-View-Kameras sowie der Kamera hinter der Windschutzscheibe für den Spurverlassenswarner waren weitere Lasersensoren sowie Kameras eingebaut. Vorne, seitlich und hinten. Im Fahrzeug befand sich vor dem Beifahrersitz ein zusätzlicher Bildschirm, auf dem durchgehend die Position des Testfahrzeugs und die Lage aller erkannten anderen Fahrzeuge um uns herum angezeigt wurde.

Damit die Überwachungsrechner die genaue Position des Testwagens ermitteln können, sind GPS-Sender auf ihm befestigt. Das verwendete GPS-Signal wird noch zusätzlich verbessert, um die für GPS typischen Abweichungen heraus zu filtern und die Positionsbestimmung zentimetergenau zu machen.

Der Rechner steht im Kofferraum – und C++ ist auch mit von der Partie

Alle gesammelten Daten werden derzeit von einem mehr oder weniger handelsüblichen PC ausgewertet, der zusammen mit einem UMTS-Router im Kofferraum des Testwagens verbaut ist. Diesen Rechner können die Ingenieure direkt vom Fahrer- und Beifahrersitz aus bedienen, eine PC-Tastatur befindet sich hierzu vorne im Wagen und der kleine Monitor vor dem Beifahrersitz dient dann als PC-Bildschirm. Die Entwicklungsumgebung Visual Studio ist auf dem Rechner ebenfalls installiert, die Test-Ingenieure können also während der Fahrt sofort den Quellcode der Steuerungssoftware für das hochautomatisierte Fahren umprogrammieren (der Code wird übrigens mit dem bewährten Klassiker C++ geschrieben).

Straßenzulassung der Testfahrzeuge

Wieso darf BMW überhaupt Autos auf deutschen Autobahnen fahren lassen, bei denen der Fahrer die Hände vom Lenkrad nehmen darf? Diese Frage stellten wir Stefanie Schindler von der Forschungskommunikation von BMW. Die Antwort: „Alle unsere Forschungsfahrzeuge (egal, ob hochautomatisiert oder teilautomatisiert) haben eine spezielle Zulassung als Werkstestwagen/Versuchsfahrzeug. Diese Zulassung berechtigt uns dazu, so oft wie nötig mit unseren Versuchsfahrzeugen (auch mit unseren hochautomatisiert fahrenden Testfahrzeugen) auf der Autobahn zu fahren. Es muss jedoch stets ein geschulter Testfahrer den Wagen begleiten.“

Marktreife

BMW rechnet derzeit damit, so ein hochautomatisiertes Fahrzeug in zirka zehn Jahren anbieten zu können (bereits im Jahr 2011 fuhr ein Versuchsfahrzeug der BMW Group Forschung und Technik ohne Fahrereingriff auf der mehrspurigen Autobahn A9 von München in Richtung Nürnberg). Damit dieses Ziel erreicht werden kann, müssen nicht nur noch viele technische Hürden genommen werden (nur ein Beispiel: Wie erkennt der Wagen selbstständig eine Autobahn-Baustelle mit den vielen durchgestrichenen Fahrbahnlinien und verhält sich dort richtig?), sondern es muss auch noch die Rechtslage geklärt werden. Denn BMW will nicht haften, wenn ein Fahrer mit einem hochautomatisierten PKW selbstverschuldet einen Unfall baut. Wie uns BMW bestätigte, gebe es durchaus intensive Verhandlungen unter den Rechtsexperten und den zuständigen Behörden. Und die KFZ-Versicherer werden hier sicherlich auch noch ein gewichtiges Wort mitreden wollen.

Quelle: Artikel aus PCWelt, 21.01.2014 http://www.pcwelt.de/news/BMW_demonstriert_hochautomatisiertes_Fahren_-Haende_vom_Lenkrad-7942384.html

BMW hits the performance limits with its driverless car

At a racetrack north of Las Vegas during CES 2014, BMW took me for a wild couple of laps at high speed, with no driver.

LAS VEGAS — When you think about autonomous cars, it is often in reference to the sensor technology making the car aware of objects and other vehicles around it. Here at CES 2014, BMW showed off another technology key to making autonomous cars a reality, the systems needed to steer, accelerate, and brake.

And BMW demonstrated it on a racetrack with a 6 Series tackling a wet corner, a slalom, and s-turns at serious speed.

In fact, the 6 Series went as fast as its computer said it could without losing grip. I sat in the passenger seat while a BMW staffer sat in the driver’s seat. He kept his hands off the wheel and feet off the pedals as the car roared toward the turns, hit the brakes, and swung the wheel over.

BMW Highly Automated Driving
This BMW 6 Series manages to automatically counter-turn to avoid a spinout in the wet.(Credit: BMW)

The most amazing part of the demonstration was the wet corner. To show the system’s car control, BMW turned off the vehicle stability systems. As the car hit the wet, it lost grip and went into a sideways slide. The system counter-steered to prevent the car from doing a 180, keeping the slide under control until the car was back on dry pavement.

BMW Highly Automated Driving
BMW added these highly accurate GPS antennas to the car for this demonstration.(Credit: Wayne Cunningham/CNET)

It may seem like cheating that, for this demonstration, BMW programmed the car’s route in through GPS, which gave it the path around the track. But all the car control was handled by automated systems using sensors and an accelerometer to see how close the car was to losing grip, and braking or steering to maintain its path.

Werner Huber of BMW described how the system in the car was made up of a Lateral Control Unit and a Longitudinal Control Unit, each handling and interpreting their respective vectors of motion in the car. These components will be essential to a future fully autonomous vehicle.

In BMW’s conception, the autonomous car could handle high-speed driving situations or unexpected low-traction surfaces.

Huber said that, before the introduction of a fully autonomous vehicle, BMW would use this type of research to add features under what it calls Highly Automated Driving. Throwing out a few ideas, Huber suggested that BMW could launch an Intersection Assist, which would contribute to safety when crossing intersections, an Evasion Assist, which would help the car steering around objects or stalled cars, and a Lateral Control Assist, a type of technology that could complement or even replace vehicle stability control systems.

Of course, all these future systems would need a complement of sensors to help the car recognize objects and other vehicles, but BMW certainly seems to have gotten its car control systems right.

Quelle: http://ces.cnet.com/8301-35289_1-57616748/bmw-hits-the-performance-limits-with-its-driverless-car/

Driverless Cars Are Further Away Than You Think

Driverless Cars Are Further Away Than You Think

Why It Matters

Carmakers are developing vehicles that have an increasing ability to autonomously drive themselves, potentially reducing accidents and traffic congestion.

A silver BMW 5 Series is weaving through traffic at roughly 120 kilometers per hour (75 mph) on a freeway that cuts northeast through Bavaria between Munich and Ingolstadt. I’m in the driver’s seat, watching cars and trucks pass by, but I haven’t touched the steering wheel, the brake, or the gas pedal for at least 10 minutes. The BMW approaches a truck that is moving slowly. To maintain our speed, the car activates its turn signal and begins steering to the left, toward the passing lane. Just as it does, another car swerves into the passing lane from several cars behind. The BMW quickly switches off its signal and pulls back to the center of the lane, waiting for the speeding car to pass before trying again.Putting your life in the hands of a robot chauffeur offers an unnerving glimpse into how driving is about to be upended. The automobile, which has followed a path of steady but slow technological evolution for the past 130 years, is on course to change dramatically in the next few years, in ways that could have radical economic, environmental, and social impacts.The first autonomous systems, which are able to control steering, braking, and accelerating, are already starting to appear in cars; these systems require drivers to keep an eye on the road and hands on the wheel. But the next generation, such as BMW’s self-driving prototype, could be available in less than a decade and free drivers to work, text, or just relax. Ford, GM, Toyota, Nissan, Volvo, and Audi have all shown off cars that can drive themselves, and they have all declared that within a decade they plan to sell some form of advanced automation—cars able to take over driving on highways or to park themselves in a garage. Google, meanwhile, is investing millions in autonomous driving software, and its driverless cars have become a familiar sight on the highways around Silicon Valley over the last several years.The allure of automation for car companies is huge. In a fiercely competitive market, in which the makers of luxury cars race to indulge customers with the latest technology, it would be commercial suicide not to invest heavily in an automated future. “It’s the most impressive experience we can offer,” Werner Huber, the man in charge of BMW’s autonomous driving project, told me at the company’s headquarters in Munich. He said the company aims to be “one of the first in the world” to introduce highway autonomy.

Thanks to autonomous driving, the road ahead seems likely to have fewer traffic accidents and less congestion and pollution. Data published last year by the Insurance Institute for Highway Safety, a U.S. nonprofit funded by the auto industry, suggests that partly autonomous features are already helping to reduce crashes. Its figures, collected from U.S. auto insurers, show that cars with forward collision warning systems, which either warn the driver about an impending crash or apply the brakes automatically, are involved in far fewer crashes than cars without them.

cars.chartx519

More comprehensive autonomy could reduce traffic accidents further still. The National Highway Traffic Safety Administration estimates that more than 90 percent of road crashes involve human error, a figure that has led some experts to predict that autonomous driving will reduce the number of accidents on the road by a similar percentage. Assuming the technology becomes ubiquitous and does have such an effect, the benefits to society will be huge. Almost 33,000 people die on the roads in the United States each year, at a cost of $300 billion, according to the American Automobile Association. The World Health Organization estimates that worldwide over 1.2 million people die on roads every year.

Meanwhile, demonstrations conducted at the University of California, Riverside, in 1997 and experiments involving modified road vehicles conducted by Volvo and others in 2011 suggest that having vehicles travel in high-speed automated “platoons,” thereby reducing aerodynamic drag, could lower fuel consumption by 20 percent. And an engineering study published last year concluded that automation could theoretically allow nearly four times as many cars to travel on a given stretch of highway. That could save some of the 5.5 billion hours and 2.9 billion gallons of fuel that the Texas Transportation Institute says are wasted by traffic congestion each year.

If all else fails, there is a big red button on the dashboard that cuts power to all the car’s computers. I practiced hitting it a few times.

But such projections tend to overlook just how challenging it will be to make a driverless car. If autonomous driving is to change transportation dramatically, it needs to be both widespread and flawless. Turning such a complex technology into a commercial product is unlikely to be simple. It could take decades for the technology to come down in cost, and it might take even longer for it to work safely enough that we trust fully automated vehicles to drive us around.

German engineering
Much of the hype about autonomous driving has, unsurprisingly, focused on Google’s self-driving project. The cars are impressive, and the company has no doubt insinuated the possibility of driverless vehicles into the imaginations of many. But for all its expertise in developing search technology and software, Google has zero experience building cars. To understand how autonomous driving is more likely to emerge, it is more instructive to see what some of the world’s most advanced automakers are working on. And few places in the world can rival the automotive expertise of Germany, where BMW, Audi, Mercedes-­Benz, and Volkswagen are all busy trying to change autonomous driving from a research effort into a viable option on their newest models.

Shortly after arriving in Munich, I found myself at a test track north of the city getting safety instruction from Michael Aeberhard, a BMW research engineer. As I drove a prototype BMW 5 Series along an empty stretch of track, Aeberhard told me to take my hands off the wheel and then issued commands that made the car go berserk and steer wildly off course. Each time, I had to grab the wheel as quickly as I could to override the behavior. The system is designed to defer to a human driver, giving up control whenever he or she moves the wheel or presses a pedal. And if all else fails, there is a big red button on the dashboard that cuts power to all the car’s computers. I practiced hitting it a few times, and discovered how hard it was to control the car without even the power-assisted steering. The idea of the exercise was to prepare me for potential glitches during the actual test drive. “It’s still a prototype,” Aeberhard reminded me several times.

After I signed a disclaimer, we drove to the autobahn outside Munich. A screen fixed to the passenger side of the dashboard showed the world as the car perceives it: three lanes, on which a tiny animated version of the car is surrounded by a bunch of floating blue blocks, each corresponding to a nearby vehicle or to an obstacle like one of the barriers on either side of the road. Aeberhard told me to activate the system in heavy traffic as we rode at about 100 kilometers per hour. When I first flicked the switch, I was dubious about even removing my hands from the wheel, but after watching the car perform numerous passing maneuvers, I found myself relaxing—to my astonishment—until I had to actually remind myself to pay attention to the road.

The car looked normal from the outside. There’s no place on a sleek luxury sedan for the huge rotating laser scanners seen on the prototypes being tested by Google. So BMW and other carmakers have had to find ways to pack smaller, more limited sensors into the body of a car without compromising weight or styling.

Concealed inside the BMW’s front and rear bumpers, two laser scanners and three radar sensors sweep the road before and behind for anything within about 200 meters. Embedded at the top of the windshield and rear window are cameras that track the road markings and detect road signs. Near each side mirror are wide-angle laser scanners, each with almost 180 degrees of vision, that watch the road left and right. Four ultrasonic sensors above the wheels monitor the area close to the car. Finally, a differential Global Positioning System receiver, which combines signals from ground-based stations with those from satellites, knows where the car is, to within a few centimeters of the closest lane marking.

Several computers inside the car’s trunk perform split-second measurements and calculations, processing data pouring in from the sensors. Software assigns a value to each lane of the road based on the car’s speed and the behavior of nearby vehicles. Using a probabilistic technique that helps cancel out inaccuracies in sensor readings, this software decides whether to switch to another lane, to attempt to pass the car ahead, or to get out of the way of a vehicle approaching from behind. Commands are relayed to a separate computer that controls acceleration, braking, and steering. Yet another computer system monitors the behavior of everything involved with autonomous driving for signs of malfunction.

Impressive though BMW’s autonomous highway driving is, it is still years away from market. To see the most advanced autonomy now available, a day later I took the train from Munich to Stuttgart to visit another German automotive giant, Daimler, which owns Mercedes-Benz. At the company’s research and development facility southeast of the city, where experimental new models cruise around covered in black material to hide new designs and features from photographers, I got to ride in probably the most autonomous road car on the market today: the 2014 ­Mercedes S-Class.

A jovial safety engineer drove me around a test track, showing how the car can lock onto a vehicle in front and follow it along the road at a safe distance. To follow at a constant distance, the car’s computers take over not only braking and accelerating, as with conventional adaptive cruise control, but steering too.

Using a stereo camera, radar, and an infrared camera, the S-Class can also spot objects on the road ahead and take control of the brakes to prevent an accident. The engineer eagerly demonstrated this by accelerating toward a dummy placed in the center of the track. At about 80 kilometers per hour, he took his hands off the wheel and removed his foot from the accelerator. Just when impact seemed all but inevitable, the car performed a near-perfect emergency stop, wrenching us forward in our seats but bringing itself to rest about a foot in front of the dummy, which bore an appropriately terrified expression.

Uncertain road
With such technology already on the road and prototypes like BMW’s in the works, it’s tempting to imagine that total automation can’t be far away. In reality, making the leap from the kind of autonomy in the Mercedes-Benz S-Class to the kind in BMW’s prototype will take time, and the dream of total automation could prove surprisingly elusive.

For one thing, many of the sensors and computers found in BMW’s car, and in other prototypes, are too expensive to be deployed widely. And achieving even more complete automation will probably mean using more advanced, more expensive sensors and computers. The spinning laser instrument, or LIDAR, seen on the roof of Google’s cars, for instance, provides the best 3-D image of the surrounding world, accurate down to two centimeters, but sells for around $80,000. Such instruments will also need to be miniaturized and redesigned, adding more cost, since few car designers would slap the existing ones on top of a sleek new model.

Cost will be just one factor, though. While several U.S. states have passed laws permitting autonomous cars to be tested on their roads, the National Highway Traffic Safety Administration has yet to devise regulations for testing and certifying the safety and reliability of autonomous features. Two major international treaties, the Vienna Convention on Road Traffic and the Geneva Convention on Road Traffic, may need to be changed for the cars to be used in Europe and the United States, as both documents state that a driver must be in full control of a vehicle at all times.

Most daunting, however, are the remaining computer science and artificial-­intelligence challenges. Automated driving will at first be limited to relatively simple situations, mainly highway driving, because the technology still can’t respond to uncertainties posed by oncoming traffic, rotaries, and pedestrians. And drivers will also almost certainly be expected to assume some sort of supervisory role, requiring them to be ready to retake control as soon as the system gets outside its comfort zone.

Despite the flashy demos, I sometimes detected among carmakers a desire to hit the brakes and temper expectations.

The relationship between human and robot driver could be surprisingly fraught. The problem, as I discovered during my BMW test drive, is that it’s all too easy to lose focus, and difficult to get it back. The difficulty of reëngaging distracted drivers is an issue that Bryan Reimer, a research scientist in MIT’s Age Lab, has well documented (see “Proceed with Caution toward the Self-Driving Car,” May/June 2013). Perhaps the “most inhibiting factors” in the development of driverless cars, he suggests, “will be factors related to the human experience.”

In an effort to address this issue, carmakers are thinking about ways to prevent drivers from becoming too distracted, and ways to bring them back to the driving task as smoothly as possible. This may mean monitoring drivers’ attention and alerting them if they’re becoming too disengaged. “The first generations [of autonomous cars] are going to require a driver to intervene at certain points,” Clifford Nass, codirector of Stanford University’s Center for Automotive Research, told me. “It turns out that may be the most dangerous moment for autonomous vehicles. We may have this terrible irony that when the car is driving autonomously it is much safer, but because of the inability of humans to get back in the loop it may ultimately be less safe.”

An important challenge with a system that drives all by itself, but only some of the time, is that it must be able to predict when it may be about to fail, to give the driver enough time to take over. This ability is limited by the range of a car’s sensors and by the inherent difficulty of predicting the outcome of a complex situation. “Maybe the driver is completely distracted,” Werner Huber said. “He takes five, six, seven seconds to come back to the driving task—that means the car has to know [in advance] when its limitation is reached. The challenge is very big.”

Before traveling to Germany, I visited John ­Leonard, an MIT professor who works on robot navigation, to find out more about the limits of vehicle automation. ­Leonard led one of the teams involved in the DARPA Urban Challenge, an event in 2007 that saw autonomous vehicles race across mocked-up city streets, complete with stop-sign intersections and moving traffic. The challenge inspired new research and new interest in autonomous driving, but ­Leonard is restrained in his enthusiasm for the commercial trajectory that autonomous driving has taken since then. “Some of these fundamental questions, about representing the world and being able to predict what might happen—we might still be decades behind humans with our machine technology,” he told me. “There are major, unsolved, difficult issues here. We have to be careful that we don’t overhype how well it works.”

Leonard suggested that much of the technology that has helped autonomous cars deal with complex urban environments in research projects—some of which is used in Google’s cars today—may never be cheap or compact enough to be employed in commercially available vehicles. This includes not just the LIDAR but also an inertial navigation system, which provides precise positioning information by monitoring the vehicle’s own movement and combining the resulting data with differential GPS and a highly accurate digital map. What’s more, poor weather can significantly degrade the reliability of sensors, ­Leonard said, and it may not always be feasible to rely heavily on a digital map, as so many prototype systems do. “If the system relies on a very accurate prior map, then it has to be robust to the situation of that map being wrong, and the work of keeping those maps up to date shouldn’t be underestimated,” ­he said.

Near the end of my ride in BMW’s autonomous prototype, I discovered an example of imperfect autonomy in action. We had made a loop of the airport and were heading back toward the city when a Smart car, which had been darting through traffic a little erratically, suddenly swung in front of me from the right. Confused by its sudden and irregular maneuver, our car kept approaching it rapidly, and with less than a second to spare I lost my nerve and hit the brakes, slowing the car down and taking it out of self-driving mode. A moment later I asked Aeberhard if our car would have braked in time. “It would’ve been close,” he admitted.

Despite the flashy demos and the bold plans for commercialization, I sometimes detected among carmakers a desire to hit the brakes and temper expectations. Ralf Herttwich, who leads research and engineering of driver assistance systems at Mercedes, explained that interpreting a situation becomes exponentially more difficult as the road becomes more complex. “Once you leave the highway and once you go onto the average road, environment perception needs to get better. Your interpretation of traffic situations, because there are so many more of them—they need to get better,” he said. “Just looking at a traffic light and deciding if that traffic light is for you is a very, very complex problem.”

MIT’s Leonard, for one, does not believe total autonomy is imminent. “I do not expect there to be taxis in Manhattan with no drivers in my lifetime,” he said, before quickly adding, “And I don’t want to see taxi drivers out of business. They know where they’re going, and—at least in Europe—they’re courteous and safe, and they get you where you need to be. That’s a very valuable societal role.”

I pondered Leonard’s objections while visiting BMW and Mercedes. I even mentioned some of them to a taxi driver in Munich who was curious about my trip. He seemed far from worried. “We have siebten Sinn—a seventh sense,” he said, referring to the instinctive road awareness a person builds up. As he nipped through the busy traffic with impressive speed, I suspected that this ability to cope deftly with such a complex and messy world could prove useful for a while longer.

Quelle: http://www.technologyreview.com/featuredstory/520431/driverless-cars-are-further-away-than-you-think/

Data Shows Google’s Robot Cars Are Smoother, Safer Drivers Than You or I

Data Shows Google’s Robot Cars Are Smoother, Safer Drivers Than You or I

Tests of Google’s autonomous vehicles in California and Nevada suggests they already outperform human drivers.

Data gathered from Google’s self-driving Prius and Lexus cars shows that they are safer and smoother when steering themselves than when a human takes the wheel, according to the leader of Google’s autonomous-car project.

Chris Urmson made those claims today at a robotics conference in Santa Clara, California. He presented results from two studies of data from the hundreds of thousands of miles Google’s vehicles have logged on public roads in California and Nevada.

One of those analyses showed that when a human was behind the wheel, Google’s cars accelerated and braked significantly more sharply than they did when piloting themselves. Another showed that the cars’ software was much better at maintaining a safe distance from the vehicle ahead than the human drivers were.

“We’re spending less time in near-collision states,” said Urmson. “Our car is driving more smoothly and more safely than our trained professional drivers.”

In addition to painting a rosy picture of his vehicles’ autonomous capabilities, Urmson showed a new dashboard display that his group has developed to help people understand what an autonomous car is doing and when they might want to take over. “Inside the car we’ve gone out of our way to make the human factors work,” he said.

Although that might suggest the company is thinking about how to translate its research project into something used by real motorists, Urmson dodged a question about how that might happen. “We’re thinking about different ways of bringing it to market,” he said. “I can’t tell you any more right now.”

Urmson did say that he is in regular contact with automakers. Many of those companies are independently working on self-driving cars themselves (see “Driverless Cars Are Further Away Than You Think”).

Google has been testing its cars on public roads since 2010 (see “Look, No Hands”), always with a human in the driver’s seat who can take over if necessary.

Urmson dismissed claims that legal and regulatory problems pose a major barrier to cars that are completely autonomous. He pointed out that California, Nevada, and Florida have already adjusted their laws to allow tests of self-driving cars. And existing product liability laws make it clear that a car’s manufacturer would be at fault if the car caused a crash, he said. He also said that when the inevitable accidents do occur, the data autonomous cars collect in order to navigate will provide a powerful and accurate picture of exactly who was responsible.

Urmson showed data from a Google car that was rear-ended in traffic by another driver. Examining the car’s annotated map of its surroundings clearly showed that the Google vehicle smoothly halted before being struck by the other vehicle.

“We don’t have to rely on eyewitnesses that can’t act be trusted as to what happened—we actually have the data,” he said. “The guy around us wasn’t paying enough attention. The data will set you free.”

Quelle: http://www.technologyreview.com/news/520746/data-shows-googles-robot-cars-are-smoother-safer-drivers-than-you-or-i/#

Das neue Drei – die neuen Tarife ab Montag, 19. August 2013

Das sind sie, die neuen Tarife des neuen Drei – präsentiert von dieIdee InnovationsAgentur

dieidee.eu-Trionow-Drei

Die Tarife @Sprachtelefonie:

  • Unlimitierte Telefonie + Daten  + SMS
    Hallo L PLUS, XL PLUS, XXL PLUS
    Inklusive sind bis zu 10000 Sprachminuten unlimited/flat und 10000 SMS
    25€ mit 2 GB
    35€ mit 4 GB
    45€ mit 6 GB
  • Österreich Tarife
    Hallo M, L, XL, XXL – Handy inklusive
    15€ mit 1000 Minuten/1000 SMS/1GB
    20€ mit 1000 Minuten/1000 SMS/2GB
    30€ mit 2000 Minuten/1000 SMS/4GB
    40€ mit 3000 Minuten/1000 SMS/6GB
  • Europa Tarife
    HalloEuropa M, L jeweils mit 1000 Österreichminuten inklusive
    15€ mit 100 Europa Sprachminutenund 100 Europa SMS
    30 € mit 300 Europa Sprachminuten und 1000 Europa SMS
  • Hallo Europa – Hallo Premium um 65 Euro
    Das absolute Sorglos-Paket mit
    unlimiterter Sprachtelefonie in Österreich
    unlimitierten SMS Ö+Europa
    Datenübertragung österreichweit inklusive ohne Geschwindigkeits-Begrenzung
    sowie 400 EU-Minuten innerhalb und in Europa
    und 250 EU-Datenroaming MB
  • Bindungs-Frei ohne Handy – SIM Only
    Hier wurden die alten Super-SIM Tarife, die weiterhin bei vorhandenem SUPERSIM Startpaket anmeldbar sind, kompakt verschlankt.
    HalloSIM M, XL
    7,50€ mit 1000 Ö-Minuten, 1000 SMS, 1 GB Daten
    15€ mit 2000 Ö-Minuten, 1000 SMS, 3 GB Daten
  • Wertkarte Nimm3
    L, XL
    10€ mit 1000 Minuten/1000 SMS, 1 GB
    18€ mit 2000 Minuten/1000 SMS, 2 GB

Die Tarife @Datenübertragung:

  • HUI – die bekannte Marke neu etabliert
    HUI Flat 10, 20, 30, 100 – mit Endgerät und Bindung
    15€, flat, 10mbit down/4 up
    18€ nur für kurze Zeit, flat, 20down/5 up
    24€, flat, 30down, 5 up
    45 € GGB unlimited-flat, FLAT 100 mit 100mbit down, 50 upHUI SIM FLAT – ohne Endgerät ohne Bindung 15 €, flat, 10 mbit down, 4 up
  • Wertkarte NIMM 3
    18 €, flat, 10 mbit down, 4 up
    ohne Endgerät ohne Bindung

dieidee.eu-das-neue-Drei-Trionow

@Zusatzpakete:

  • das liebgewonnene 3 Like Home wurde zum Zusatzpaket „3 Europa“ 1000 Freiminuten, 1000 SMS, 1 GB Daten in Italien, Großbritannien, Irland, Schweden und Dänemark und kostet monatlich 7,50 €

foto: markus sulzbacher / derstandard.atfoto: markus sulzbacher / derstandard.at

Drei SuperSIM – alte Tarife bleiben bestehen

DieIdee InnovationsAgentur fragt in der Presseabteilung von Drei nach:

Können „alte“ SUPERSIM Wertkarten, auch noch in der kommenden Woche im SuperSIM XXL (Telefonie) und SuperSIM Flat (Internet) zu „alten Preisen“ angemeldet werden, sofern man ein solches Package in der letzten Woche gekauft, aber noch nicht aktiviert hat.

Die Pressesabteilung klärt auf:

Mit alten SIM-Karten können die bisherigen Tarife (egal ob Voice oder Data) weiterhin aktiviert werden.

Insider-Wissen auf UMTSLINK.at ?

Der Vertrag kommt eigentlich bereits mit dem Kauf des SuperSIM-Start Sets zustande. Schließlich kaufst du damit ein bestimmtes Wertkarten-Tarifangebot und kein Überraschungsei.

Wenn du die SIM-Karte aktivierst und eine entsprechende Tarifoption wählst, werden diese Informationen zusätzlich in allen technischen Systemen bei Drei hinterlegt (vom HLR bis zum Billingsystem). Damit bist du aktiver Kunde und kannst alle von Drei im Rahmen dieses Tarifs angebotenen Dienste tatsächlich nutzen. Um an die im Tarif inkludierten Freieinheiten zu kommen, ist es notwendig, (genügend) Guthaben aufzuladen. Wenn du das heute machst, bekommst du die Freieinheiten heute. Wenn du das in x Wochen machst, dann werden die Freieinheiten eben erst in x Wochen aktiviert. Wie du willst.

Das gilt auch für alle SuperSIM-Start Sets die als Restposten während der nächsten Wochen noch verkauft werden. Damit können auch nach dem 19.08. die bekannten SuperSIM-Wertkartentarife aktiviert werden.

Ein Umsteigen von den SuperSIM-Wertkartentarifen auf die entsprechenden Vertragstarife wird nach dem 19.08. mit sehr hoher Wahrscheinlichkeit nicht mehr möglich sein. Und da spielt es dann auch keine Rolle, wann der Wertkartentarif aktiviert worden ist.

Samsung Unveils Enormous 6.3-Inch Galaxy Mega Smartphone

Samsung-galaxy-mega

If you liked the big screen of Samsung’s Galaxy Note smartphones, the company has something even more massive coming. The Samsung Galaxy Mega line, which will hit Europe in May, is led by a monstrous 6.3-inch phone — the biggest smartphone yet.

Earlier this year, China’s Huawei unveiled a 6.1-inch phone, but the Galaxy Mega beats it by a fraction of an inch. Samsung’s gigantic phone shows the race to build the biggest smartphone has taken on a similar flavor as the competition to build ever-larger flat-screen TVs in the last decade.

Importantly, the Galaxy Mega phones do not include a stylus (the „S Pen“) that’s a hallmark of the Galaxy Note line. They’re also not pure tablets, since they’re equipped to connect with mobile networks.

The Mega line is led by the gargantuan 6.3-inch Galaxy Mega 6.3. Samsung oddly didn’t opt for a full HD screen at that size, giving it 720p resolution. It’s powered by a 1.7GHz dual-core processor with 1.5GB of RAM, and runs Android 4.2 „Jelly Bean.“ It’ll be available with either 8 or 16GB of onboard storage, and you can supplement that with a microSD card.

The „little brother“ in the line is the Galaxy Mega 5.8, which is even lower resolution at 960 x 540. The CPU is a 1.4GHz dual-core design, also with 1.5GB of ram and Android 4.2. While the Mega 6.3 can connect to LTE networks, the 5.8 is HSPA+.

Samsung says the Galaxy Mega is for customers who want the „most out of one device“ that brings both quality and value. They also sport new capabilities: S Travel provides trip information as well as local guides and resources, and Story Album lets users create albums of events, store moments in a timeline and quickly publish print copies of albums.

Of course, the phones have many of the features that exist on previous Galaxy devices, including Group Play, which can share content to other Galaxy phones and tablets on the same Wi-Fi network, and multi-screen capability, which lets the user run and interact with two apps on the screen at the same time.

Also included is Air View, where the screen reacts to a fingertip hovering above it by, for example, opening a drop-down menu or showing preview text in an email.

Samsung says the global launch of the Mega phones will roll out „gradually“, arriving first in Europe and Russia in May. No word yet on a U.S. release.

How do you like Samsung’s super-duper-size phones?

Quelle: http://mashable.com/2013/04/11/samsung-galaxy-mega/