Real-Time Detection of Suspicious Behaviors and Theft Prevention Using an Artificial Intelligence Solution
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University of Tlemcen
Abstract
This research develops a real-time shoplifting detection system using
dual-stream deep learning that combines video analysis with human pose
estimation. The system achieves 92.45% accuracy in detecting suspicious
retail behaviors, enabling proactive theft prevention through automated
surveillance and immediate alert generation