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Human Action Recognition Using Tensor Principal Component Analysis

机译:使用张量主成分分析的人类动作识别

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Human action can be naturally represented as multidimensional arrays known as tensors. In this paper, a simple and efficient algorithm based on tensor subspace learning is proposed for human action recognition. An action is represented as a 3th-order tensor first, then tensor principal component analysis is used to reduce dimensionality and extract the most useful features for action recognition. So the spatial and temporal correlations of the action are preserved. After then, a nearest neighbor classifier based on tensor distance is used to recognize action, in other words, measuring the similarity between actions using tensor distance in tensor subspace. The proposed method is assessed by using a public video database, namely Weizmann human action data sets. Experimental results reveal that the proposed method performs very well on that data sets, and robustness test has been carried out to testify the effectiveness.
机译:人类行为可以自然地表示为张量的多维数组。本文提出了一种基于张量子空间学习的简单有效的人体动作识别算法。首先将动作表示为三阶张量,然后使用张量主成分分析来减少维数并提取最有用的特征以进行动作识别。因此,保留了动作的时空相关性。此后,基于张量距离的最近邻居分类器用于识别动作,换句话说,使用张量子空间中的张量距离测量动作之间的相似性。通过使用公共视频数据库(即Weizmann人类行为数据集)对提出的方法进行评估。实验结果表明,该方法在该数据集上表现良好,并进行了鲁棒性测试以证明其有效性。

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