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Real-time action recognition using a multilayer descriptor with variable size

机译:使用可变大小的多层描述符进行实时动作识别

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Video analysis technology has become less expensive and more powerful in terms of storage resources and resolution capacity, promoting progress in a wide range of applications. Video-based human action detection has been used for several tasks in surveillance environments, such as forensic investigation, patient monitoring, medical training, accident prevention, and traffic monitoring, among others. We present a method for action identification based on adaptive training of a multilayer descriptor applied to a single classifier. Cumulative motion shapes (CMSs) are extracted according to the number of frames present in the video. Each CMS is employed as a self-sufficient layer in the training stage but belongs to the same descriptor. A robust classification is achieved through individual responses of classifiers for each layer, and the dominant result is used as a final outcome. Experiments are conducted on five public datasets (Weizmann, KTH, MuHAVi, IXMAS, and URADL) to demonstrate the effectiveness of the method in terms of accuracy in real time. (C) 2016 SPIE and IS&T
机译:视频分析技术在存储资源和分辨率方面已经变得越来越便宜,功能越来越强大,从而促进了广泛应用的发展。基于视频的人体动作检测已用于监视环境中的多项任务,例如法医调查,患者监视,医学培训,事故预防和交通监视等。我们提出了一种基于对应用于单个分类器的多层描述符进行自适应训练的动作识别方法。根据视频中存在的帧数提取累积运动形状(CMS)。每个CMS在训练阶段均用作自给自足的层,但属于同一描述符。通过对每层分类器的单独响应,可以实现鲁棒的分类,并将主要结果用作最终结果。在五个公共数据集(Weizmann,KTH,MuHAVi,IXMAS和URADL)上进行了实验,以证明该方法在实时性方面的有效性。 (C)2016 SPIE和IS&T

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