Related Papers
Anja Delić, Matej Grcic, Siniša Šegvić
Yu Wang, Shengjie Zhao
Weakly supervised video anomaly detection (WS-VAD) involves identifying the temporal intervals that contain anomalous events in untrimmed videos, where only video-level annotations are provided as supervisory signals. However, a key limitation persists in WS-VAD, as dense frame-level annotations are absent, which often leaves existing methods struggling to learn anomaly semantics effectively. To address this issue, we propose a novel framework named LAS-VAD, short for Learning Anomaly Semantics for WS-VAD, which integrates anomaly-connected component mechanism and intention awareness mechanism
Zunkai Dai, Ke Li, Jiajia Liu +2
The collection and detection of video anomaly data has long been a challenging problem due to its rare occurrence and spatio-temporal scarcity. Existing video anomaly detection (VAD) methods under perform in open-world scenarios. Key contributing factors include limited dataset diversity, and inadequate understanding of context-dependent anomalous semantics. To address these issues, i) we propose LAVIDA, an end-to-end zero-shot video anomaly detection framework. ii) LAVIDA employs an Anomaly Exposure Sampler that transforms segmented objects into pseudo-anomalies to enhance model adaptability
Yuzhi Huang, Chenxin Li, Haitao Zhang +9
Fei Li, Wenxuan Liu, Jingjing Chen +4
Snehashis Majhi, Giacomo D'Amicantonio, Antitza Dantcheva +5
Sign in to access this content