MC-Risk: Multi-Component Risk Fields for Risk Identification and Motion Planning

Published: 27 Nov 2025, Last Modified: 28 Nov 2025E-SARS OralEveryoneRevisionsBibTeXCC BY 4.0
Keywords: Risk Fields, Autonomous Driving, Motion Planning
Abstract: We presentMC-Risk, a planner-aligned, multi-component risk field on a bird’s-eye view grid that yields early, calibrated, and class-aware risk localization. MC-Risk linearly composes three interpretable modules: (i) a motorized-agent field that fuses a black-box multimodal trajectory predictor with an analytic Gaussian-torus construction whose lateral width grows with speed/curvature and whose height attenuates with look-ahead; (ii) a VRU risk field that replaces isotropic pedestrian blobs with a forward-biased anisotropic kernel aligned to heading and speed; and (iii) a road penalty field that exploits full HD-map topology, imposing an off-road penalty and lane-aware risk exposure for same/opposite directions. We conduct, to our knowledge, the first standardized quantitative evaluation of a risk-field formulation on RiskBench’s collision subset. MC-Risk attains the best overall risk localization and the earliest hazard indication. Finally, we demonstrate a plug and-play planning interface by using the field as an MPC cost density, enabling risk-aware trajectory generation without additional training.
Submission Number: 10
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