Human Activity Recognition for Office Surveillance

P. J. Subrahmanya Hande, Rakeshgowda D S, Naveen Kumar, Nandana K A, P. Kanwal
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Abstract

Human activity surveillance video systems are gaining popularity in the field of computer vision due to user demands for security as well as their growing importance in many applications such as elder care, home nursing, and unusual event alarming. Automatic activity recognition is the key to video surveillance. This paper presents a method for human activity recognition in office surveillance videos using machine learning models including convLSTM, GRCNN and LRCN with three main steps: pre-processing, feature extraction and activity classification. The main targeted activities are walking, sleeping on desk, handshaking, typing, opening or closing door. Experimental results demonstrate the effectiveness of the proposed LRCN approach in accurately recognizing human activities in office surveillance videos with acceptable training and testing accuracy.
办公室监控的人体活动识别
由于用户对安全性的需求以及在老年人护理、家庭护理和异常事件报警等许多应用中的重要性日益增加,人类活动监控视频系统在计算机视觉领域越来越受欢迎。自动活动识别是视频监控的关键。本文提出了一种基于convLSTM、GRCNN和LRCN等机器学习模型的办公监控视频人体活动识别方法,主要分为预处理、特征提取和活动分类三个步骤。主要的目标活动是走路,睡在桌子上,握手,打字,开门或关门。实验结果证明了LRCN方法在办公室监控视频中准确识别人类活动的有效性,并且具有可接受的训练和测试精度。
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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