City drive in an autonomous test vehicle. Safety driver has hands off the wheel but needs to keep their eyes on the road.
AI behind the wheel for city driving Wojciech Derendarz, of the UP-Drive project, is working out how autonomous vehicles can develop improved perception, relying on combined technologies to process urban environments, so self-driving cars can take a step closer to earning their driving license. Wojciech Derendarz, Project Leader
Taxi – take me home!
at Research & Development of Volkswagen Group, is a veteran of the autonomous car sector who has been sitting ‘hands off’ behind the wheel of self-driving prototypes for 13 years. His latest goal is to make vehicle AI better understand challenging urban environments. It sounds hard, and it is. To accomplish this feat, a car needs to adapt, accurately comprehend and react instantaneously in complex, changing environments. The original aim of UP-Drive was to develop a technology for self-driving cars, able to locate a parking space after the driver has been ‘dropped off’ and self-park. As the goal was to offer that technology anywhere in a city – not just on special premises like parking garages at airports – the project scope quickly evolved to tackling the myriad of challenges faced by city driving, with parking being the simplest piece. With 70% of the global population predicted to be living in urban and suburban areas by 2050, having reliable, completely autonomous cars will have a significant impact and represent a huge benchmark in self-driving technology.
“It is important to realise two different approaches out there,” explained Derendarz. “Most car manufacturers take the evolutionary approach. They currently offer privately owned cars with driver assistance systems, meaning that the driver still needs to monitor the system at all times – and they gather data and optimise performance over time. Once the systems become good enough, they hope to enable the higher level of autonomy that will finally allow the driver to take their eyes off the road. “We decided to shift the UP-Drive project when we realised you need similar technology for someone’s private on-street valet parking function, as you need for a robo taxi. It seems realistic that the systems we are developing will be seen first in robo taxies and robo shuttles, backed by companies willing to invest heavily in innovation. There is a stronger commercial case as they earn around the clock in the business model. A private car is parked most of the time and the cost for the technology may initially be prohibitive to car owners.”
www.euresearcher.com
So how would such a system work? A system capable of the higher levels of autonomy would need to have a strong capability of localisation and mapping, would need to master complete round-view perception of the vehicle’s environment, and be able to form a detailed understanding of complex scenes it encounters as well as predict what other traffic participants are up to. UP-Drive used and combined several sensing technologies such as camera, lidar and radar as a foundation for all those tasks.
Know where you are “The first step is knowing where you are and where you want to go. You need an idea of where you are in the world which means for AI, relying on a navigation application or a map from your smartphone or car – only much more detailed and precise.” It is useful and currently seems necessary to use a map in autonomous cars to provide information about the environment beyond that, what can be perceived with sensors. “We have the information in maps but you also need to know precisely where you are in
31