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Human Action Classification Using an Extended BoW Formalism

机译:使用扩展的BoW形式主义进行人类行为分类

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In human action classification task, a video must be classified into a pre-determined class. To cope with this problem, we propose a mid-level representation which extends the Bag-of-Words formalism in order to better described the low-level features, exploring distance-to-codeword histograms. The main contribution of this article is the assembly of low-level features by a mid-level representation enriched with information about distances between descriptors and codewords. The proposed representation takes into account volumes of hyper-regions obtained from hyperspheres centered at codewords. Experimental results demonstrated that our strategy either has improved the classification rates more than 6% with respect to the compared mid-level representation for UCF Sports, or it is a competitive one, for KTH and UCF-11.
机译:在人类行为分类任务中,视频必须分类为预定类别。为了解决这个问题,我们提出了一种中间层表示形式,它扩展了词袋形式,以更好地描述低层特征,探索距离码字的直方图。本文的主要贡献是通过中级表示形式对低级功能进行了组合,其中丰富了有关描述符和代码字之间距离的信息。所提出的表示考虑了从以代码字为中心的超球体获得的超区域的体积。实验结果表明,相对于UCF运动的中级代表,我们的策略已将分类率提高了6%以上,或者对于KTH和UCF-11,这是一种具有竞争力的策略。

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