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Privacy-Aware Video Anomaly Detection through Orthogonal Subspace Projection

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Video anomaly detection (VAD) systems often prioritize accuracy while overlooking privacy concerns, limiting their suitability for real-world deployment. We propose the Orthogonal Projection Layer (OPL), a lightweight module that removes task-irrelevant variations to produce representations focused on anomaly-relevant cues. To address privacy risks in human-centered scenarios, we introduce Guided OPL (G-OPL), which suppresses facial attributes using weak supervision from face-presence signals while preserving non-identifying features such as pose and motion. A cosine alignment objective enforces consistent capture and removal of facial information without identity labels or adversarial training. We further present a privacy-aware evaluation framework that jointly assesses detection performance and privacy preservation, and enables analysis of how sensitive information is filtered. Experiments show that embedding privacy constraints into model design reduces sensitive information while maintaining or improving detection accuracy, supporting projection-based architectures as a principled approach for privacy-aware VAD.

Lei Wang, Wenxiang Diao, Andrew Busch, Jun Zhou, Yongsheng Gao• 2026

Related benchmarks

TaskDatasetResultRank
Abnormal Event DetectionUCSD Ped2
AUC98.9
163
Video Anomaly DetectionMSAD (test)
Overall AUC88
15
Video Anomaly DetectionMSAD
Assault AUC71.3
11
Video Anomaly DetectionCHAD
AUC85.9
3
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