RiskProp: Collision-Anchored Self-Supervised Risk Propagation for Early Accident Anticipation
arXiv cs.CV / 3/31/2026
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Key Points
- The paper proposes RiskProp, a collision-anchored self-supervised framework for early accident anticipation from dashcam videos that avoids subjective “anomaly onset” frame annotations.
- RiskProp propagates risk backward in time using a future-frame regularization loss based on next-frame prediction as a soft target, anchored only to reliably labeled collision frames.
- It enforces a more realistic risk trajectory by adding an adaptive monotonic constraint that encourages non-decreasing risk progression prior to collisions.
- Experiments on CAP and Nexar report state-of-the-art results, with smoother and more discriminative risk curves that improve both early detection performance and interpretability.
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