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Aligning Effective Tokens with Video Anomaly in Large Language Models

Authors

Yingxian Chen, Jiahui Liu, Ruidi Fan, Yanwei Li, Chirui Chang, Shizhen Zhao, Wilton W. T. Fok, Xiaojuan Qi, Yik-Chung Wu

ICCV-2025direct anomaly

Score

14

Tags

video anomaly

Methods

ViT

Links

Paper Page

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