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arxiv: 2309.08889 · v2 · pith:PFCQR47Anew · submitted 2023-09-16 · 💻 cs.RO

SafeShift: Safety-Informed Distribution Shifts for Robust Trajectory Prediction in Autonomous Driving

classification 💻 cs.RO
keywords predictiontrajectoryscenariosautonomouscontributedatasetsdistributiondriving
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As autonomous driving technology matures, safety and robustness of its key components, including trajectory prediction, is vital. Though real-world datasets, such as Waymo Open Motion, provide realistic recorded scenarios for model development, they often lack truly safety-critical situations. Rather than utilizing unrealistic simulation or dangerous real-world testing, we instead propose a framework to characterize such datasets and find hidden safety-relevant scenarios within. Our approach expands the spectrum of safety-relevance, allowing us to study trajectory prediction models under a safety-informed, distribution shift setting. We contribute a generalized scenario characterization method, a novel scoring scheme to find subtly-avoided risky scenarios, and an evaluation of trajectory prediction models in this setting. We further contribute a remediation strategy, achieving a 10% average reduction in prediction collision rates. To facilitate future research, we release our code to the public: github.com/cmubig/SafeShift

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