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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Enhanced Grassmann discriminant analysis with randomized time warping for motion recognition
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Enhanced Grassmann discriminant analysis with randomized time warping for motion recognition

机译:随机识别随机时代扭矩增强基地判别分析

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摘要

This paper proposes a framework for classifying motion sequences, by extending the framework of Grassmann discriminant analysis (GDA). A problem of GDA is that its discriminant space is not necessarily optimal. This limitation becomes even more prominent when utilizing the subspace representation of randomized time warping (RTW). RTW is a sequence representation that can effectively model a motion's temporal information by a low-dimensional subspace, simplifying the problem of comparing two sequences to that of comparing two subspaces. The key idea of the proposed enhanced GDA is projecting class subspaces onto a generalized difference subspace before mapping them on a Grassmann manifold. The GDS projection can remove overlapping components of the subspaces in the vector space, nearly orthogonalizing them. Consequently, a dictionary of orthogonalized class subspaces produces a set of more discriminant data points in the Grassmann manifold, in comparison with the original set. This set of data points can further enhance the discriminant ability of GDA. We demonstrate the validity of the proposed framework, RTW+eGDA, through experiments on motion recognition using the publicly available Cambridge gesture, KTH action, and UCF sports datasets. (C) 2019 Elsevier Ltd. All rights reserved.
机译:本文提出了一种通过扩展基地判别分析(GDA)的框架来分类运动序列的框架。 GDA的问题是其判别空间不一定是最佳的。当利用随机时间翘曲(RTW)的子空间表示时,这种限制变得更加突出。 RTW是一种序列表示,其可以通过低维子空间有效地模拟运动的时间信息,简化了将两个序列与比较两个子空间进行比较的问题。所提升的增强GDA的关键思想是将类子空间投影到广义差分子空间之前,然后在基层歧管上映射它们。 GDS投影可以消除矢量空间中子空间的重叠部件,几乎与它们结交。因此,与原始集合相比,正交化类子空间字典在基层歧管中产生了一组更多判别数据点。这组数据点可以进一步增强GDA的判别能力。我们通过使用公开可用的剑桥手势,@动作和UCF运动数据集进行运动识别实验,展示所提出的框架RTW + EGDA的有效性。 (c)2019年elestvier有限公司保留所有权利。

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