2022
DOI: 10.48550/arxiv.2210.08061
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Motion Inspired Unsupervised Perception and Prediction in Autonomous Driving

Abstract: Learning-based perception and prediction modules in modern autonomous driving systems typically rely on expensive human annotation and are designed to perceive only a handful of predefined object categories. This closed-set paradigm is insufficient for the safety-critical autonomous driving task, where the autonomous vehicle needs to process arbitrarily many types of traffic participants and their motion behaviors in a highly dynamic world. To address this difficulty, this paper pioneers a novel and challengin… Show more

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