IEEE ITSC 2020 - Safe Reinforcement Learning for Autonomous Lane Changing Using Set-Based Prediction

Описание к видео IEEE ITSC 2020 - Safe Reinforcement Learning for Autonomous Lane Changing Using Set-Based Prediction

The talk was presented during the IEEE International Conference on Intelligent Transportation Systems 2020: "Safe Reinforcement Learning for Autonomous Lane Changing Using Set-Based Prediction" (https://doi.org/10.1109/ITSC45102.202....
Abstract - Machine learning approaches often lack safety guarantees, which are often a key requirement in real-world tasks. This paper addresses the lack of safety guarantees by extending reinforcement learning with a safety layer that restricts the action space to the subspace of safe actions. We demonstrate the proposed approach using lane changing in autonomous driving. To distinguish safe actions from unsafe ones, we compare planned motions with the set of possible occupancies of traffic participants generated by set-based predictions. In situations where no safe action exists, a verified failsafe controller is executed. We used real-world highway traffic data to train and test the proposed approach. The evaluation result shows that the proposed approach trains agents that do not cause collisions during training and deployment.
If you have any questions, please do not hesitate to contact Hanna Krasowski ([email protected]).

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