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Putting poses on manifold for action recognition

机译:将姿势摆在动作识别上

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摘要

In action recognition, bag of words based approaches have been shown to be successful, for which the quality of codebook is critical. This paper proposes a novel approach to select key poses for the codebook, which models the descriptor space utilizing manifold learning to recover the geometric structure of the descriptors on a lower dimensional manifold space. A PageRank based centrality measure is developed to select key poses on the manifold. In each step, a key pose is selected and the remaining model is modified to maximize the discriminative power of selected codebook. In classification, the ambiguity of each action couple is evaluated through cross validation. An additional subdivision will be executed for ambiguous pairs. Experiments on ut-tower dataset showed that our method is able to obtain better performance than the state-of-the-art methods.
机译:在动作识别中,基于词袋的方法已被证明是成功的,对此,码本的质量至关重要。本文提出了一种用于选择码本关键姿势的新颖方法,该方法利用流形学习在低维流形空间上恢复描述符的几何结构,从而对描述符空间进行建模。开发了基于PageRank的中心度度量以选择流形上的关键姿势。在每个步骤中,选择一个关键姿势,然后修改其余模型,以使所选码本的辨别能力最大化。在分类中,通过交叉验证评估每个动作对的歧义性。对于不明确的对,将执行附加的细分。在ut-tower数据集上进行的实验表明,与最新方法相比,我们的方法能够获得更好的性能。

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