监测中的异常活动识别:综述

Vikas Pogadadanda, Shafeullah Shaik, Gogula Venkata Sai Neeraj, Hima Varshini Siralam, Iwin Thanakumar Joseph S, K. B. V. B. Rao
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引用次数: 1

摘要

由于犯罪率的上升,利用监控摄像头监控公众行为最近对各个场所的公共安全变得更加重要。由于犯罪率的上升,维护安全已成为人们的生存问题。随着安全摄像头的进步,他们现在可以随时监视公众的行为。由于视频数据量每天都在增加,许多当前的监控系统都需要一名操作员持续监控,这使得它们效率低下。为了自动识别公共和私人场所的奇怪行为,现代监控系统必须是智能的。在当前十年中,由于工业4.0革命,机器学习和基于深度学习的智能算法在自动检测和识别的各种应用中提供高效性能方面发挥着重要作用。本文主要研究了通过监控有效识别异常活动的各种智能算法,及其在各种应用中的主要优势、挑战和贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Abnormal Activity Recognition on Surveillance: A Review
Utilizing surveillance cameras to monitor public behaviour has become more important recently for public safety at various sites due to a rise in crimes. Maintaining safety and security has become a survival issue for people due to rising crime rates. With the advancement of security cameras, they now serve as a constant watch on public behavior. Many current surveillance systems require a human operator to continuously monitor them since the amount of video data is increasing daily, making them ineffective. To automatically identify odd behaviour in both public and private places, modern surveillance systems must be intelligent. In current decade, due to industrial 4.0 revolution, machine learning and deep learning based intelligent algorithms plays major role in providing efficient performance in various applications exclusively over automatic detection and identification. This research article mainly focuses on investigation of different intelligent algorithms used for an effective recognition of abnormal activity through surveillance, its major advantages, challenges and contributions in terms of various applications.
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