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Track Any Anomalous Object:A Granular Video Anomaly Detection Pipeline

Authors

Yuzhi Huang, Chenxin Li, Haitao Zhang, Zixu Lin, Yunlong Lin, Hengyu Liu, Wuyang Li, Xinyu Liu, Jiechao Gao, Yue Huang, Xinghao Ding, Yixuan Yuan

CVPR-2025direct anomaly

Score

34

Tags

anomaly detectionanomalousvideo anomaly

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