Abstract
Performance limitations of automotive sensors and the resulting perception errors are one of the most critical limitations in the design of Advanced Driver Assistance Systems and Autonomous Driving Systems. Ability to efficiently recreate realistic error patterns in a traffic simulation setup not only helps to ensure that such systems operate correctly in presence of perception errors, but also fulfills a key role in the training of Machine-Learning-based algorithms often utilized in them. This paper proposes a set of efficient sensor models for detecting road users and static road features. Applicability of the models is presented on an example of Reinforcement-Learning-based driving policy training. Experimental results demonstrate a significant increase in the policy’s robustness to perception errors, alleviating issues caused by the differences between the virtual traffic environment used in the policy’s training and the realistic conditions.
Funder
Aptiv Services Poland S.A.
Subject
Electrical and Electronic Engineering,Computer Networks and Communications,Hardware and Architecture,Signal Processing,Control and Systems Engineering
Reference25 articles.
1. Driving to safety: How many miles of driving would it take to demonstrate autonomous vehicle reliability?;Kalra;Transp. Res. Part A Policy Pract.,2016
2. A survey on visual traffic simulation: Models, evaluations, and applications in autonomous driving;Chao;Computer Graphics Forum,2019
3. Shalev-Shwartz, S., Shammah, S., and Shashua, A. (2016). Safe, multi-agent, reinforcement learning for autonomous driving. arXiv.
4. Slavik, Z., and Mishra, K.V. (2019, January 9–15). Phenomenological modeling of millimeter-wave automotive radar. Proceedings of the 2019 URSI Asia-Pacific Radio Science Conference (AP-RASC), New Delhi, India.
5. Hirsenkorn, N., Subkowski, P., Hanke, T., Schaermann, A., Rauch, A., Rasshofer, R., and Biebl, E. (2017, January 28–30). A ray launching approach for modeling an FMCW radar system. Proceedings of the 2017 18th International Radar Symposium (IRS), Prague, Czech Republic.