RiskProp: Collision-Anchored Self-Supervised Risk Propagation for Early Accident Anticipation
Yiyang Zou, Tianhao Zhao, Peilun Xiao, Hongyu Jin, Longyu Qi, Yuxuan Li, Liyin Liang, Yifeng Qian, Chunbo Lai, Yutian Lin, Zhihui Li, Yu Wu

TL;DR
RiskProp introduces a self-supervised risk propagation method for early accident prediction from dashcam videos, eliminating the need for subjective anomaly annotations and improving early warning accuracy.
Contribution
It proposes a novel collision-anchored self-supervised framework that models risk evolution using future-frame regularization and monotonic constraints, outperforming existing methods.
Findings
Achieves state-of-the-art early accident anticipation performance.
Produces smoother, more interpretable risk curves.
Improves early warning accuracy on CAP and Nexar datasets.
Abstract
Accident anticipation aims to predict impending collisions from dashcam videos and trigger early alerts. Existing methods rely on binary supervision with manually annotated "anomaly onset" frames, which are subjective and inconsistent, leading to inaccurate risk estimation. In contrast, we propose RiskProp, a novel collision-anchored self-supervised risk propagation paradigm for early accident anticipation, which removes the need for anomaly onset annotations and leverages only the reliably annotated collision frame. RiskProp models temporal risk evolution through two observation-driven losses: first, since future frames contain more definitive evidence of an impending accident, we introduce a future-frame regularization loss that uses the model's next-frame prediction as a soft target to supervise the current frame, enabling backward propagation of risk signals; second, inspired by the…
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