Detecting Harmful Activity in Pilgrimage Using Deep Learning

M. Genemo
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引用次数: 0

Abstract

CCTV surveillance is the most extensively used intelligent latest innovation. The use of surveillance cameras has risen dramatically because of the convenience of monitoring from anywhere and the reduction of crime rates in public areas.  In this paper, we introduce the idea of bad vibe activity detection from live videos to enhance the security and safety of pilgrims.  The proposed bad vibes activity recognition model is intended to be addressed in the most efficient manner possible using cutting-edge technologies such as TensorFlow and Keras.   TensorFlow was chosen because the project could be deployed to a mobile environment in the future with the possibility of extension of other areas such as airport security, bus stain, and public areas that may deserve special attention for security checks. We choose MediaPipe Holistic for employee bad vibe recognition in the model.
利用深度学习检测朝圣中的有害活动
CCTV是智能监控应用最广泛的最新创新。监控摄像机的使用急剧增加,因为从任何地方进行监控都很方便,而且公共场所的犯罪率也有所下降。本文介绍了从现场视频中检测不良氛围活动的思想,以增强朝圣者的安全保障。提出的不良振动活动识别模型旨在使用TensorFlow和Keras等尖端技术以最有效的方式解决问题。之所以选择TensorFlow,是因为该项目可以在未来部署到移动环境中,并有可能扩展到其他领域,如机场安全、公共汽车站和公共区域,这些领域可能需要特别注意安全检查。在模型中,我们选择MediaPipe Holistic对员工不良氛围进行识别。
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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