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Distance-based human action recognition using optimized class representations

机译:使用优化的类表示法进行基于距离的人类动作识别

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We study distance-based classification of human actions and introduce a new metric learning approach based on logistic discrimination for the determination of a low-dimensional feature space of increased discrimination power. We argue that for effective distance-based classification, both the optimal projection space and the optimal class representation should be determined. We qualitatively and quantitatively illustrate the superiority of the proposed approach to metric learning approaches employing the class mean for class representation. We also introduce extensions of the proposed metric learning approach to allow for richer class representations and to operate in arbitrary-dimensional Hilbert spaces for non-linear feature extraction and classification. Experimental results denote that the performance of the proposed distance-based classification schemes is comparable (or even better) to that of Support Vector Machine classifier (in both the linear and kernel cases) which is currently the standard choice for human action recognition. (C) 2015 Elsevier B.V. All rights reserved.
机译:我们研究了基于距离的人类行为分类,并引入了一种新的基于逻辑判断的度量学习方法,以确定增加了分辨力的低维特征空间。我们认为,对于基于距离的有效分类,应该确定最佳投影空间和最佳类别表示。我们定性和定量地说明了所提出的方法对采用类均值进行类表示的度量学习方法的优越性。我们还介绍了所提出的度量学习方法的扩展,以允许使用更丰富的类表示形式,并在任意维的希尔伯特空间中进行非线性特征提取和分类。实验结果表明,所提出的基于距离的分类方案的性能与支持向量机分类器(在线性和核情况下)具有可比性(甚至更好),后者是当前人类动作识别的标准选择。 (C)2015 Elsevier B.V.保留所有权利。

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