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3D human action analysis and recognition through GLAC descriptor on 2D motion and static posture images

机译:3D通过Glac描述符对2D运动和静态姿势图像的人体行动分析与识别

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摘要

In this paper, we present an approach for identification of actions within depth action videos. First, we process the video to get motion history images (MHIs) and static history images (SHIs) corresponding to an action video based on the use of 3D Motion Trail Model (3DMTM). We then characterize the action video by extracting the Gradient Local Auto-Correlations (GLAC) features from the SHIs and the MHIs. The two sets of features i.e., GLAC features from MHIs and GLAC features from SHIs are concatenated to obtain a representation vector for action. Finally, we perform the classification on all the action samples by using the l2-regularized Collaborative Representation Classifier (l2-CRC) to recognize different human actions in an effective way. We perform evaluation of the proposed method on three action datasets, MSR-Action3D, DHA and UTD-MHAD. Through experimental results, we observe that the proposed method performs superior to other approaches.
机译:在本文中,我们提出了一种识别深度动作视频中的行动的方法。首先,我们处理视频以获取与基于使用3D运动跟踪模型(3DMTM)的动作视频对应的运动历史图像(MHIS)和静态历史图像(SHIS)。然后,我们通过从Shis和MHI中提取渐变本地自动相关(Glac)功能来表征动作视频。两组特征I.E.,来自SHI的MHIS和GLAC功能的GLAC特征被连接到获得动作的表示向量。最后,我们通过使用L2正则化协作表示分类器(L2-CRC)以有效的方式识别不同的人类动作来执行对所有动作样本的分类。我们对三个动作数据集,MSR-Action3D,DHA和UTD-MHAD进行评估。通过实验结果,我们观察到所提出的方法优于其他方法。

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