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Verifiable Goal Recognition for Autonomous Driving with Occlusions

A new method using decision trees for goal recognition in self-driving vehicles handles occlusions and provides accurate, interpretable, and computationally efficient inference across various scenarios.

Year
2022
Venue
arXiv 2022
Authors
4
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arxiv.org/abs/2206.14163v2ARXIV-DEFAULT
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Abstract

Goal recognition (GR) involves inferring the goals of other vehicles, such as a certain junction exit, which can enable more accurate prediction of their future behaviour. In autonomous driving, vehicles can encounter many different scenarios and the environment may be partially observable due to occlusions. We present a novel GR method named Goal Recognition with Interpretable Trees under Occlusion (OGRIT). OGRIT uses decision trees learned from vehicle trajectory data to infer the probabilities of a set of generated goals. We demonstrate that OGRIT can handle missing data due to occlusions and make inferences across multiple scenarios using the same learned decision trees, while being computationally fast, accurate, interpretable and verifiable. We also release the inDO, rounDO and OpenDDO datasets of occluded regions used to evaluate OGRIT.

Authors

4