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BADAS: Context Aware Collision Prediction Using Real-World Dashcam Data

About

Existing collision prediction methods often fail to distinguish between ego-vehicle threats and random accidents not involving the ego vehicle, leading to excessive false alerts in real-world deployment. We present BADAS, a family of collision prediction models trained on Nexar's real-world dashcam collision dataset -- the first benchmark designed explicitly for ego-centric evaluation. We re-annotate major benchmarks to identify ego involvement, add consensus alert-time labels, and synthesize negatives where needed, enabling fair AP/AUC and temporal evaluation. BADAS uses a V-JEPA2 backbone trained end-to-end and comes in two variants: BADAS-Open (trained on our 1.5k public videos) and BADAS1.0 (trained on 40k proprietary videos). Across DAD, DADA-2000, DoTA, and Nexar, BADAS achieves state-of-the-art AP/AUC and outperforms a forward-collision ADAS baseline while producing more realistic time-to-accident estimates. We release our BADAS-Open model weights and code, along with re-annotations of all evaluation datasets to promote ego-centric collision prediction research.

Roni Goldshmidt, Hamish Scott, Lorenzo Niccolini, Shizhan Zhu, Daniel Moura, Orly Zvitia• 2025

Related benchmarks

TaskDatasetResultRank
Accident DetectionDAD (test)
AUC0.99
9
Accident DetectionDOTA (test)
AUC0.72
9
Accident DetectionDADA 2000 (test)
AUC87
9
Collision AnticipationNexar Kaggle competition
AP@0.5s93.5
4
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