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Adaptive similarity measures for matrix objects based on feature variation and sequence length for gesture recognition

机译:基于特征变化和序列长度的矩阵对象自适应相似度量用于手势识别

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In pattern recognition, the usage of appropriate similarity measure is crucial for acquiring robust performance. In this paper, we present two similarity measures, which compute a similarity between two matrices, based on the temporal feature variation and sequence length difference, respectively. Especially, the matrix object used in this paper has unique characteristic. Each row and column has different meaning. Each row corresponds to a frame of sequence and each column corresponds to variation of a feature by time. We analyze this characteristic of matrix object and extract additional information for acquiring robust performance. From these analyses, we assume that the feature with a large amount of variation is more important than the feature with lower variation and the sequence length difference between two gestures is helpful to calculate a similarity. And then we define two factors: feature importance factor and scaling factor. And then we present two similarity measures and apply them to three public benchmark databases: Cambridge hand gesture database, ChaLearn database and SKIG database. The experimental results show that our proposed similarity measures acquires the improvement of performance.
机译:在模式识别中,使用适当的相似性度量对于获得强大的性能至关重要。在本文中,我们提出了两种相似性度量,分别基于时间特征变化和序列长度差异来计算两个矩阵之间的相似性。特别是,本文使用的矩阵对象具有独特的特征。每行和每列都有不同的含义。每一行对应于一帧序列,每一列对应于特征随时间的变化。我们分析了矩阵对象的这一特性,并提取了额外的信息以获取强大的性能。从这些分析中,我们假设变化较大的特征比变化较小的特征更为重要,并且两个手势之间的序列长度差异有助于计算相似度。然后我们定义两个因素:特征重要性因素和缩放因素。然后,我们提出两种相似性度量,并将其应用于三个公共基准数据库:剑桥手势数据库,ChaLearn数据库和SKIG数据库。实验结果表明,我们提出的相似性度量获得了性能上的提高。

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