Self-learned Intelligence for Integrated Decision and Control of Automated Vehicles at Signalized Intersections
Yangang Ren, Jianhua Jiang, Dongjie Yu, Shengbo Eben Li, Jingliang, Duan, Chen Chen, Keqiang Li

TL;DR
This paper introduces a dynamic permutation state representation within an integrated decision and control framework for autonomous vehicles at signalized intersections, effectively managing mixed traffic flows for safer and more efficient urban driving.
Contribution
It develops a novel state encoding method and an integrated optimization approach to handle complex, mixed traffic interactions at intersections, improving decision-making and safety.
Findings
Enhanced driving performance including comfort and safety
Efficient and smooth intersection crossing in complex scenarios
Improved decision compliance and safety margins
Abstract
Intersection is one of the most complex and accident-prone urban scenarios for autonomous driving wherein making safe and computationally efficient decisions is non-trivial. Current research mainly focuses on the simplified traffic conditions while ignoring the existence of mixed traffic flows, i.e., vehicles, cyclists and pedestrians. For urban roads, different participants leads to a quite dynamic and complex interaction, posing great difficulty to learn an intelligent policy. This paper develops the dynamic permutation state representation in the framework of integrated decision and control (IDC) to handle signalized intersections with mixed traffic flows. Specially, this representation introduces an encoding function and summation operator to construct driving states from environmental observation, capable of dealing with different types and variant number of traffic participants. A…
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Taxonomy
TopicsTraffic control and management · Traffic Prediction and Management Techniques · Autonomous Vehicle Technology and Safety
