Interactive Planning for Autonomous Urban Driving in Adversarial Scenarios 2021

2021 IEEE INTERNATIONAL CONFERENCE ON ROBOTICS AND AUTOMATION (ICRA 2021)(2021)

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摘要
Autonomous urban driving among human-driven cars requires a holistic understanding of road rules, driver intents and driving styles. This is challenging as a short-term, single instance, driver intent of lane change may not correspond to their driving styles for a longer duration. This paper presents an interactive behavior planner which accounts for road context, short-term driver intent, and long-term driving style to infer beliefs over the latent states of surrounding vehicles. We use a specialized Partially Observable Markov Decision Process to provide risk-averse decisions. Specifically, we consider adversarial driving scenarios caused by irrational drivers to validate the robustness of our proposed interactive behavior planner in simulation as well as on a full-size selfdriving car. Our experimental results show that our algorithm enables safer and more travel time-efficient autonomous driving compared to baselines even in adversarial scenarios.
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关键词
holistic understanding,road rules,driving styles,interactive behavior planner,road context,short-term driver intent,long-term driving style,specialized Partially Observable Markov Decision Process,adversarial driving scenarios,irrational drivers,travel time-efficient autonomous driving,adversarial scenarios,interactive planning,autonomous urban driving,human-driven cars
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