An Intelligent Framework for Crime Prediction Using Behavioural Tracking and Motion Analysis

Rajat Shenoy, Deepak Yadav, Harshita Lakhotiya, Jignesh Sisodia
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引用次数: 3

Abstract

Closed Circuit Television Systems are now being deployed in most public spaces to make the city more secure. Manual observation of these clips for the prevention of crime would take up a lot of manpower. This paper proposes an Intelligent Framework using the power of Artificial Intelligence to ensure the safety of the surroundings. The system will use different Computer Vision techniques for video analysis. It will monitor CCTV footage for any criminal offenders, violent objects, and suspicious behavior which could lead to crime. SSD Mobilenet Model, an architecture for concealed object detection, is trained for labeling weapons in the frame. The images captured are processed using Face Detection algorithms to identify human faces. Facial Recognition API using libraries in python is implemented to recognize the offenders from criminal records. A ResNet-GRU Model was trained for human behavior analysis which detects suspicious actions. An alert is generated when there are signs of crime and concerned authorities are notified. The proposed framework aims to make societies secure by correctly identifying criminals and crime-related objects.
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基于行为跟踪和运动分析的智能犯罪预测框架
现在大多数公共场所都部署了闭路电视系统,以使城市更加安全。人工观察这些片段以预防犯罪会占用大量人力。本文提出了一种利用人工智能的力量来保证周围环境安全的智能框架。该系统将使用不同的计算机视觉技术进行视频分析。它将监视闭路电视录像,以发现任何罪犯、暴力物品和可能导致犯罪的可疑行为。SSD Mobilenet模型是一种用于隐藏目标检测的体系结构,它被训练用于标记框架中的武器。使用人脸检测算法对捕获的图像进行处理以识别人脸。使用python库实现面部识别API,从犯罪记录中识别罪犯。一个ResNet-GRU模型被训练用于人类行为分析,以检测可疑行为。当有犯罪迹象并通知有关当局时,就会发出警报。拟议的框架旨在通过正确识别罪犯和与犯罪有关的物体来确保社会安全。
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