Automated daily human activity recognition for video surveillance using neural network

Mohanad Babiker, Othman Omran Khalifa, K. K. Htike, Aisha Hassan, Muhamed Zaharadeen
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引用次数: 63

Abstract

Surveillance video systems are gaining increasing attention in the field of computer vision due to its demands of users for the seek of security. It is promising to observe the human movement and predict such kind of sense of movements. The need arises to develop a surveillance system that capable to overcome the shortcoming of depending on the human resource to stay monitoring, observing the normal and suspect event all the time without any absent mind and to facilitate the control of huge surveillance system network. In this paper, an intelligent human activity system recognition is developed. Series of digital image processing techniques were used in each stage of the proposed system, such as background subtraction, binarization, and morphological operation. A robust neural network was built based on the human activities features database, which was extracted from the frame sequences. Multi-layer feed forward perceptron network used to classify the activities model in the dataset. The classification results show a high performance in all of the stages of training, testing and validation. Finally, these results lead to achieving a promising performance in the activity recognition rate.
基于神经网络的视频监控日常人类活动自动识别
由于用户对安全的需求,监控视频系统在计算机视觉领域受到越来越多的关注。对人体运动的观察和预测是很有前景的。因此,需要开发一种能够克服依靠人力资源持续监控的缺点,时刻不忘观察正常和可疑事件,便于对庞大的监控系统网络进行控制的监控系统。本文开发了一种智能人体活动识别系统。在系统的各个阶段采用了一系列数字图像处理技术,如背景减法、二值化和形态学处理。基于从帧序列中提取的人体活动特征数据库,构建了鲁棒神经网络。采用多层前馈感知器网络对数据集中的活动模型进行分类。分类结果在训练、测试和验证的各个阶段都表现出良好的性能。最后,这些结果导致在活动识别率方面取得了令人满意的表现。
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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