Download PDFOpen PDF in browserReal-Time Threat Identification: a Video Analytics-Based Violence Detection SystemEasyChair Preprint 1580810 pages•Date: February 11, 2025AbstractThe task of detecting violence is crucial and has significant repercussions for both public safety and societal well-being. Because real-world settings are dynamic, traditional methods frequently find it difficult to adjust, which has led to the investigation of new computational techniques. This study exam-ines modern approaches to violence detection by utilizing knowledge from multidisciplinary and artificial intelligence research. By combining computer vision, signal processing, and behavioral psychology, we offer a comprehen-sive framework that can be used to recognize and classify violent incidents in a variety of settings. We investigate the effectiveness of cutting-edge methods, such Long Short-Term Memory (LSTM) networks, in identifying minor behavioral indicators that suggest aggression and capturing temporal correlations using real-world datasets. Keyphrases: LSTM, Violence Detection, anomaly detection, deep learning, surveillance
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