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Human action recognition in surveillance video of a computer laboratory

机译:计算机实验室监控视频中的人为识别

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摘要

One of the driving forces of behavior recognition in video is the analysis of surveillance video. In this video, humans are monitored and their actions are classified as being normal or a deviation from the norm. Local spatio-temporal features have gained attention to be an effective descriptor for action recognition in video. The problem of using texture as local descriptor is relatively unexplored. In this paper, a work on human action recognition in video is presented by proposing a fusion of appearance, motion and texture as local descriptor for the bag-of-feature model. Rigorous experiments was conducted on the recorded UTP dataset using the proposed descriptor. The average accuracy obtained was 85.92% for the fused descriptor as compared to 75.06% for the combination of shape and motion descriptor. The result shows an improved performance for the proposed descriptor over the combination of appearance and motion as local descriptor of an interest point.
机译:视频中行为识别的驱动力之一是监视视频的分析。在此视频中,对人类进行了监视,并将他们的行为归类为正常行为或与正常行为的偏离。局部时空特征已经成为视频中动作识别的有效描述符。使用纹理作为局部描述符的问题尚待探讨。在本文中,通过提出外观,运动和纹理的融合作为特征包模型的局部描述符,提出了视频中人类动作识别的工作。使用建议的描述符对记录的UTP数据集进行了严格的实验。融合描述子的平均准确度为85.92%,而形状和运动描述子的组合为75.06%。结果表明,与作为兴趣点的局部描述符的外观和运动的组合相比,所提出的描述符具有更高的性能。

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