Mario Francesco De Pascale
Accelerating Anomaly Detection in Real-Time Video Streaming on the Edge.
Rel. Tatiana Tommasi. Politecnico di Torino, Corso di laurea magistrale in Ingegneria Informatica (Computer Engineering), 2025
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Abstract
Anomaly Detection in Videos has gained interest in recent years due to a combination of factors, such as data availability, computational capabilities and deep learning techniques that automated the process. However, being able to process real-time video streaming on edge devices with limited resources is still an active area of research. To address this challenge, this thesis proposes quantized S3D-inspired architecture that employs MobileNet for initial 2D feature extraction followed by MoViNet for processing spatio-temporal features. The model is specifically optimized for Raspberry Pi’s computational constraints in conjunction with the Raspberry Pi AI Camera (IMX500) and employs post-training static quantization and quantization-aware training (QAT) to achieve over 79% frame-level AUROC and over 88% video-level AUROC on UCF-Crime.
While state-of-theart methods achieve over 86% and 91% respectively, the proposed approach delivers competitive performance with 66% fewer parameters (4M vs 12M) and 77% reduction in computational complexity (8.27 vs 36.29 GFLOPs) only in feature extraction stage, a critical step often excluded from existing computational analyses despite being the primary bottleneck
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