Integrated Intelligent Surveillance System Using Deep Learning

Arya Paul, Sona Paul, Manikandan A. R, Katharin P Jose, Sabarinath M.S
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Abstract

Nowadays the surveillance systems are widely used to find out the suspicious events that have occurred. In conventional systems, there are a lot of limitations such as storage, bandwidth, cost, the short lifespan of hardware devices, loading issues, etc. We developed an intelligent surveillance system using deep learning in which the video footage of suspicious events is extracted. Transfer learning, a part of machine learning, is used for face detection which involves the reuse of a pre-trained model on new data. The abnormal activity detection is done using a multi person MoveNet Light model and the face detection is done using VGG16. The suspicious objects found in the frame (gun, mask) are identified using corner detection. This system offers less bandwidth, high security, effective storage, and reduced load-balancing issues. In this paper, we detailed the face detection, object detection and anomaly detection used in our system.
基于深度学习的集成智能监控系统
如今,监控系统被广泛用于发现已经发生的可疑事件。在传统系统中,存在许多限制,例如存储、带宽、成本、硬件设备的短寿命、加载问题等。我们开发了一种使用深度学习的智能监控系统,可以提取可疑事件的视频片段。迁移学习是机器学习的一部分,用于人脸检测,这涉及到对新数据的预训练模型的重用。异常活动检测采用多人MoveNet Light模型,人脸检测采用VGG16模型。在框架中发现的可疑物体(枪,面具)使用角检测识别。该系统提供更少的带宽、更高的安全性、有效的存储和更少的负载平衡问题。本文详细介绍了人脸检测、目标检测和异常检测在系统中的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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