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CUSTOM-DESIGNED SVM KERNELS FOR IMPROVED ROBUSTNESS OF PHONEME CLASSIFICATION

机译:定制设计的SVM内核,可提高音素分类的鲁棒性

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The robustness of phoneme classification to white Gaussian noise and pink noise in the acoustic waveform domain is investigated using support vector machines. We focus on the problem of designing kernels which are tuned to the physical properties of speech. For comparison, results are reported for the PLP representation of speech using standard kernels. We show that major improvements can be achieved by incorporating the properties of speech into kernels. Furthermore, the high-dimensional acoustic waveforms exhibit more robust behavior to additive noise. Finally, we investigate a combination of the PLP and acoustic waveform representations which attains better classification than either of the individual representations over a range of noise levels.
机译:使用支持向量机研究了声音波形域中白色高斯噪声和粉红色噪声的鲁棒性。我们专注于设计核的问题,这些内核被调整为语音的物理性质。为了比较,据报道了使用标准内核的PLP演讲的结果。我们表明,通过将语音的属性纳入核来说,可以实现重大改进。此外,高尺寸声波形状表现出更鲁棒的行为与加性噪声。最后,我们研究了PLP和声波形表示的组合,其比一系列噪声水平的各个表示的分类更好。

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