Anomaly Detection in Residential Video Surveillance on Edge Devices in
IoT Framework
- URL: http://arxiv.org/abs/2107.04767v1
- Date: Sat, 10 Jul 2021 05:52:15 GMT
- Title: Anomaly Detection in Residential Video Surveillance on Edge Devices in
IoT Framework
- Authors: Mayur R. Parate, Kishor M. Bhurchandi, Ashwin G. Kothari
- Abstract summary: We propose anomaly detection for intelligent surveillance using CPU-only edge devices.
A modular framework to capture object-level inferences and tracking is developed.
Experiments indicate the proposed method is feasible and achieves satisfactory results in real-life scenarios.
- Score: 1.5293427903448025
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Intelligent resident surveillance is one of the most essential smart
community services. The increasing demand for security needs surveillance
systems to be able to detect anomalies in surveillance scenes. Employing
high-capacity computational devices for intelligent surveillance in residential
societies is costly and not feasible. Therefore, we propose anomaly detection
for intelligent surveillance using CPU-only edge devices. A modular framework
to capture object-level inferences and tracking is developed. To cope with
partial occlusions, posture deformations, and complex scenes we employed
feature encoding and trajectory associations. Elements of the anomaly detection
framework are optimized to run on CPU-only edge devices with sufficient FPS.
The experimental results indicate the proposed method is feasible and achieves
satisfactory results in real-life scenarios.
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