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Papers/ProDisc-VAD: An Efficient System for Weakly-Supervised Ano...

ProDisc-VAD: An Efficient System for Weakly-Supervised Anomaly Detection in Video Surveillance Applications

Tao Zhu, Qi Yu, Xinru Dong, Shiyu Li, Yue Liu, Jinlong Jiang, Lei Shu

2025-05-04Anomaly Detection In Surveillance VideosWeakly-supervised Video Anomaly DetectionVideo Anomaly DetectionMultiple Instance LearningContrastive LearningSupervised Anomaly DetectionWeakly-supervised Anomaly Detection
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Abstract

Weakly-supervised video anomaly detection (WS-VAD) using Multiple Instance Learning (MIL) suffers from label ambiguity, hindering discriminative feature learning. We propose ProDisc-VAD, an efficient framework tackling this via two synergistic components. The Prototype Interaction Layer (PIL) provides controlled normality modeling using a small set of learnable prototypes, establishing a robust baseline without being overwhelmed by dominant normal data. The Pseudo-Instance Discriminative Enhancement (PIDE) loss boosts separability by applying targeted contrastive learning exclusively to the most reliable extreme-scoring instances (highest/lowest scores). ProDisc-VAD achieves strong AUCs (97.98% ShanghaiTech, 87.12% UCF-Crime) using only 0.4M parameters, over 800x fewer than recent ViT-based methods like VadCLIP, demonstrating exceptional efficiency alongside state-of-the-art performance. Code is available at https://github.com/modadundun/ProDisc-VAD.

Results

TaskDatasetMetricValueModel
Video UnderstandingShanghaiTech Weakly SupervisedAUC-ROC97.98ProDisc-VAD
Video UnderstandingUCF-CrimeROC AUC87.12ProDisc-VAD
VideoShanghaiTech Weakly SupervisedAUC-ROC97.98ProDisc-VAD
VideoUCF-CrimeROC AUC87.12ProDisc-VAD
Anomaly DetectionShanghaiTech Weakly SupervisedAUC-ROC97.98ProDisc-VAD
Anomaly DetectionUCF-CrimeROC AUC87.12ProDisc-VAD

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