An Algorithm for Supervised Driving of Cooperative Semi-Autonomous Vehicles (Extended)
نویسندگان
چکیده
Before reaching full autonomy, vehicles will gradually be equipped with more and more advanced driver assistance systems (ADAS), effectively rendering them semi-autonomous. However, current ADAS technologies seem unable to handle complex traffic situations, notably when dealing with vehicles arriving from the sides, either at intersections or when merging on highways. The high rate of accidents in these settings prove that they constitute difficult driving situations. Moreover, intersections and merging lanes are often the source of important traffic congestion and, sometimes, deadlocks. In this article, we propose a cooperative framework to safely coordinate semiautonomous vehicles in such settings, removing the risk of collision or deadlocks while remaining compatible with human driving. More specifically, we present a supervised coordination scheme that overrides control inputs from human drivers when they would result in an unsafe or blocked situation. To avoid unnecessary intervention and remain compatible with human driving, overriding only occurs when collisions or deadlocks are imminent. In this case, safe overriding controls are chosen while ensuring they deviate minimally from those originally requested by the drivers. Simulation results based on a realistic physics simulator show that our approach is scalable to real-world scenarios, and computations can be performed in real-time on a standard computer for up to a dozen simultaneous vehicles.
منابع مشابه
Identification of an Autonomous Underwater Vehicle Dynamic Using Extended Kalman Filter with ARMA Noise Model
In the procedure of designing an underwater vehicle or robot, its maneuverability and controllability must be simulated and tested, before the product is finalized for manufacturing. Since the hydrodynamic forces and moments highly affect the dynamic and maneuverability of the system, they must be estimated with a reasonable accuracy. In this study, hydrodynamic coefficients of an autonomous un...
متن کاملOn the Importance of Stereo for Accurate Depth Estimation: An Efficient Semi-Supervised Deep Neural Network Approach
We revisit the problem of visual depth estimation in the context of autonomous vehicles. Despite the progress on monocular depth estimation in recent years, we show that the gap between monocular and stereo depth accuracy remains large—a particularly relevant result due to the prevalent reliance upon monocular cameras by vehicles that are expected to be self-driving. We argue that the challenge...
متن کاملCrossroad Cooperative Driving Based on GPS and Wireless Communications
Autonomous vehicles have the capacity of circulating much in the way humans drive them, but without the inherent limitations of people driving. A second step in the development of these kind of vehicles is to add the capacity to perform cooperative driving with other cars to them, autonomously as well manually driven. The aim of this paper is to describe a new kind maneuvers for autonomous vehi...
متن کاملEnd-to-End Deep Reinforcement Learning for Lane Keeping Assist
Reinforcement learning is considered to be a strong AI paradigm which can be used to teach machines through interaction with the environment and learning from their mistakes, but it has not yet been successfully used for automotive applications. There has recently been a revival of interest in the topic, however, driven by the ability of deep learning algorithms to learn good representations of...
متن کاملCooperation Based on Communication: An Approach for an Autonomous Driving System
Autonomous driving in real road traffic is still an unsolved challenge. While sensor systems and image processing certainly make up a great part of the needed system, intelligent algorithms for the actual driving behaviour must likewise be developed. Communication and cooperation between different vehicles on the road can be a great help for achieving such a system. In the CarTalk2000 project, ...
متن کامل