Crime Anomaly Detection using CNN and Ensemble Model

Gautam Gupta, Prachi Aggarwal, Achin Jain, Puneet Singh Lamba, A. Dubey, Gopal Chaudhary
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引用次数: 0

Abstract

Every single day, thousands of crimes are perpetrated, and hundreds may be probably taking place right now throughout the world. Without a doubt, crime is viewed as a social blight. Nothing can truly stop it, no matter what is done. Surveillance cameras, on the other hand, can dramatically minimize it. Using public surveillance camera systems to prevent, document, and minimize crime can be a cost-effective solution. Installing enough cameras to detect crimes in progress and integrating technology to automate the monitoring of the live stream from these cameras will result in the most effective systems. Because of its self-learning characteristics, the advanced Artificial Intelligence surveillance system is constantly learning and improving. The Deep Learning Algorithms applied in this work processes videos using electronic devices like cameras in real-time termed as image processing, saving both human resources and a great deal of time. The highest accuracy of 86.6% was attained by Ensemble Model, followed by Inception Model with SGD Optimizer, Leaky Relu Activation Function giving an accuracy of 83.43%. Hence, anomalies were detected efficiently using decision making in real-time surveillance scenarios.
基于CNN和集成模型的犯罪异常检测
每一天都有成千上万的犯罪发生,而现在全世界可能正在发生数百起犯罪。毫无疑问,犯罪被视为社会的祸根。没有什么能真正阻止它,无论做什么。另一方面,监控摄像头可以极大地减少这种情况。使用公共监控摄像系统来预防、记录和减少犯罪是一种经济有效的解决方案。安装足够多的摄像头来探测正在进行的犯罪,并整合技术来自动监控这些摄像头的实时流,将会产生最有效的系统。先进的人工智能监控系统由于具有自我学习的特点,正在不断地学习和完善。在这项工作中应用的深度学习算法使用电子设备(如相机)实时处理视频,称为图像处理,节省了人力资源和大量时间。集成模型的准确率最高,为86.6%,其次是初始模型与SGD优化器、Leaky Relu激活函数的结合,准确率为83.43%。因此,在实时监控场景中,通过决策有效地检测异常。
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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