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Discriminative Collaborative Representation and Its Application to Audio Signal Classification

机译:鉴别的协作表示及其在音频信号分类中的应用

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In this paper, we propose Discriminative Collaborative Representation (DCR) as an extension to Collaborative Representation (CR), by adding an extra discriminative term to the original formulation of CR. In the literature, both CR and Sparse Representation (SR) have been shown to be good in signal classification. Compared to SR, CR is more computationally efficient, but does not give obvious performance improvement. Therefore, we propose DCR, which aims at improving the performance of CR in signal classification. Besides, we extend DCR to Kernel DCR (KDCR), which generalizes DCR by introducing kernel functions. Comparisons among SR, CR and DCR are made in doing two audio signal classification tasks. Experimental results show that DCR can outperform CR and SR in both classification tasks, which demonstrates the effectiveness of our proposed DCR and the usefulness of the extra discriminative term.
机译:在本文中,我们将鉴别性协作表示(DCR)作为协作表示(CR)的延伸,通过向CR的原始配方添加额外的鉴别术语来加入CR。在文献中,CR和稀疏表示(SR)都被证明在信号分类中是良好的。与SR相比,CR更加计算效率,但不具有明显的性能改进。因此,我们提出DCR,旨在提高CR在信号分类中的性能。此外,我们将DCR扩展到内核DCR(KDCR),通过引入内核函数来概括DCR。 SR中的比较,CR和DCR是在做两个音频信号分类任务时进行的。实验结果表明,DCR可以在分类任务中优于CR和SR,这证明了我们所提出的DCR的有效性和额外歧视项的有用性。

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