Towards Cross-Modal Forgery Detection and Localization on Live Surveillance Videos
Yong Huang, Xiang Li, Wei Wang, Tao Jiang, Qian Zhang

TL;DR
Secure-Pose introduces a cross-modal system using WiFi signals to detect and localize video forgery in real-time surveillance, leveraging human pose features from synchronized camera and WiFi data.
Contribution
It is the first to utilize WiFi signals for fine-grained forgery detection and localization in live surveillance videos, addressing limitations of prior methods.
Findings
Achieves 95.1% detection accuracy
Effectively localizes tampered objects
Operates in real-world environments
Abstract
The cybersecurity breaches render surveillance systems vulnerable to video forgery attacks, under which authentic live video streams are tampered to conceal illegal human activities under surveillance cameras. Traditional video forensics approaches can detect and localize forgery traces in each video frame using computationally-expensive spatial-temporal analysis, while falling short in real-time verification of live video feeds. The recent work correlates time-series camera and wireless signals to recognize replayed surveillance videos using event-level timing information but it cannot realize fine-grained forgery detection and localization on each frame. To fill this gap, this paper proposes Secure-Pose, a novel cross-modal forgery detection and localization system for live surveillance videos using WiFi signals near the camera spot. We observe that coexisting camera and WiFi signals…
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Taxonomy
TopicsDigital Media Forensic Detection · Anomaly Detection Techniques and Applications · Video Surveillance and Tracking Methods
