Cross-Epoch Learning for Weakly Supervised Anomaly Detection in Surveillance Videos

示意图

摘要

Weakly Supervised Anomaly Detection (WSAD) in surveillance videos is a complex task since usually only video-level annotations are available. Previous work treated it as a regression problem by giving different scores on normal and anomaly events. However, the widely used mini-batch training strategy may suffer from the data imbalance between these two types of events, which limits the model’s performance. In this work, a cross-epoch learning (XEL) strategy associated with a hard instance bank (HIB) is proposed to introduce additional information from previous training epochs. Two new losses are proposed for XEL to achieve a higher detection rate as well as a lower false alarm rate of anomaly events. Moreover, the proposed XEL can be directly integrated into any existing WSAD framework. Experimental results of three XEL embedded models have shown promising AUC improvement (3%~7%) on two public datasets, surpassing the state-of-the-art methods. Our code is available at https://github.com/sdjsngs/XEL-WSAD.

出版物
IEEE Signal Processing Letters
郁盛浩
郁盛浩
硕士生

研究兴趣:计算机视觉,行为识别,异常行为检测.

王 翀
王 翀
副教授

研究兴趣:人机交互、人工智能、计算机视觉、多媒体计算.

毛乔梅
毛乔梅
硕士生

研究领域:零样本目标检测,就职公司:京东物流