LGN-Net: Local-Global Normality Network for Video Anomaly Detection
Mengyang Zhao, Xinhua Zeng, Yang Liu, Jing Liu, Di Li, Xing Hu,, Chengxin Pang

TL;DR
LGN-Net is a novel video anomaly detection model that simultaneously learns local spatiotemporal and global prototype normalities, improving detection accuracy across diverse scenes.
Contribution
The paper introduces LGN-Net, a two-branch network that combines local and global normality learning for more robust and generalizable video anomaly detection.
Findings
LGN-Net outperforms existing methods on benchmark datasets.
The fusion of local and global normality improves detection accuracy.
LGN-Net generalizes well to various scenes.
Abstract
Video anomaly detection (VAD) has been intensively studied for years because of its potential applications in intelligent video systems. Existing unsupervised VAD methods tend to learn normality from training sets consisting of only normal videos and regard instances deviating from such normality as anomalies. However, they often consider only local or global normality in the temporal dimension. Some of them focus on learning local spatiotemporal representations from consecutive frames to enhance the representation for normal events. But powerful representation allows these methods to represent some anomalies and causes miss detection. In contrast, the other methods are devoted to memorizing prototypical normal patterns of whole training videos to weaken the generalization for anomalies, which also restricts them from representing diverse normal patterns and causes false alarm. To this…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Artificial Immune Systems Applications · Human Pose and Action Recognition
