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3D Features for human action recognition with semi-supervised learning

机译:具有半监督学习功能的3D人体动作识别功能

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摘要

Human action recognition (HAR) is a very challenging task because of intra-class variations and complex backgrounds. Here, a motion history image (MHI)-based interest point refinement is proposed to remove the noisy interest points. Histogram of oriented gradient (HOG) and histogram of optical flow (HOF) techniques are extended from spatial to spatio-temporal domain to preserve the temporal information. These local features are used to build the trees for the random forest technique. During tree building, a semi-supervised learning is proposed for better splitting of data points at each node. For recognition of an action, mutual information is estimated for all the extracted interest points to each of the trained class by passing them through the random forest. The proposed method is evaluated on KTH, Weizmann, and UCF Sports standard datasets. The experimental results indicate that the proposed technique provides better performance compared to earlier reported techniques.
机译:由于班级内部的变化和复杂的背景,人类动作识别(HAR)是一项非常具有挑战性的任务。在此,提出了一种基于运动历史图像(MHI)的兴趣点细化方法,以去除嘈杂的兴趣点。定向梯度直方图(HOG)和光流直方图(HOF)技术从空间扩展到时空域,以保留时间信息。这些局部特征用于为随机森林技术构建树木。在树构建期间,提出了一种半监督学习方法,以更好地分割每个节点上的数据点。为了识别一个动作,通过将所有兴趣点传递到随机森林中,为每个提取的兴趣点估计相互信息。在KTH,Weizmann和UCF Sports标准数据集上对提出的方法进行了评估。实验结果表明,与早期报道的技术相比,提出的技术提供了更好的性能。

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