Unsupervised Traffic Accident Detection in First-Person Videos

2019 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS)(2019)

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摘要
Recognizing abnormal events such as traffic violations and accidents in natural driving scenes is essential for successful autonomous driving and advanced driver assistance systems. However, most work on video anomaly detection suffers from two crucial drawbacks. First, they assume cameras are fixed and videos have static backgrounds, which is reasonable for surveillance applications but not for vehicle-mounted cameras. Second, they pose the problem as one-class classification, relying on arduously hand-labeled training datasets that limit recognition to anomaly categories that have been explicitly trained. This paper proposes an unsupervised approach for traffic accident detection in first-person (dashboard-mounted camera) videos. Our major novelty is to detect anomalies by predicting the future locations of traffic participants and then monitoring the prediction accuracy and consistency metrics with three different strategies. We evaluate our approach using a new dataset of diverse traffic accidents, AnAn Accident Detection (A3D), as well as another publicly-available dataset. Experimental results show that our approach outperforms the state-of-the-art. Code and the dataset developed in this work are available at: https:llgithub.comlMoonBtvdltad-IROS2019.
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关键词
first-person videos,traffic violations,natural driving scenes,autonomous driving,advanced driver assistance systems,video anomaly detection,static backgrounds,surveillance applications,vehicle-mounted cameras,one-class classification,anomaly categories,unsupervised approach,dashboard-mounted camera,traffic participants,prediction accuracy,consistency metrics,diverse traffic accidents,unsupervised traffic accident detection,abnormal event recognition,hand-labeled training datasets,AnAn accident detection
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