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Sequences Feature Vectors Extracting Method for Similarity Measurement Based on Wavelet and Matrix Transforming

机译:基于小波和矩阵变换的相似度测量序列特征向量提取方法

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摘要

A feature vectors extracting method for similarity measurement between a referenced sequence and an analyzed sequence is proposed. The referenced sequence and analyzed sequence are compressed into two wavelet matrices by Discrete Orthogonal Wavelet Transform (DOWT), respectively. A singular value vector and the multi-subspaces of the referenced matrix are derived from wavelet matrices by singular value decomposition (SVD). Consequently, a uniform subspace of which all sequences are mutual orthogonal can be constructed by serializing multi-subspaces, and the analyzed feature vectors can also be obtained by inner product transformation between analyzed sequence and all sequences derived from the multi-subspaces. The similarity is measured between the analyzed feature vector and the singular value vector of the referenced sequence. The simulation results show that the proposed method is improved in the dimension, accuracy and anti-noise ability with little sensitivity sacrifice.
机译:提出了一种用于参考序列与分析序列之间相似度测量的特征向量提取方法。参考序列和分析序列分别通过离散正交小波变换(DOWT)压缩为两个小波矩阵。通过奇异值分解(SVD)从小波矩阵中导出参考矩阵的奇异值向量和多个子空间。因此,可以通过对多个子空间进行序列化来构建所有序列相互正交的统一子空间,并且还可以通过分析序列与从多个子空间派生的所有序列之间的内积变换来获得分析特征向量。在分析的特征向量和参考序列的奇异值向量之间测量相似度。仿真结果表明,该方法在尺寸,精度和抗噪能力方面得到了改善,而灵敏度损失很小。

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