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AN ADAPTIVE ORTHOGONAL SPARSIFYING TRANSFORM FOR SPEECH SIGNALS

机译:用于语音信号的自适应正交稀疏变换

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In this paper we consider the problem of representing a speech signal with an adaptive transform that captures the main features of the data. The transform is orthogonal by construction, and is found to give a sparse representation of the data being analysed. The orthogonality property implies that evaluation of both the forward and inverse transform involve a simple matrix multiplication. The proposed dictionary learning algorithm is compared to the K singular value decomposition (K-SVD) method, which is found to yield very sparse representations, at the cost of a high approximation error. The proposed algorithm is shown to have a much lower computational complexity than K-SVD, while the resulting signal representation remains relatively sparse.
机译:在本文中,我们考虑代表语音信号的问题,该语音信号具有捕获数据的主要特征。该变换是通过施工正交的,并且被发现提供了分析数据的稀疏表示。正交性属性意味着对前进和逆变换的评估涉及简单的矩阵乘法。将所提出的字典学习算法与K个奇异值分解(K-SVD)方法进行比较,该方法以高近似误差的成本产生非常稀疏的表示。所提出的算法被示出比K-SVD具有远低得多的计算复杂性,而产生的信号表示保持相对稀释。

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