Combined Method for Informative Feature Selection for Speech Pathology Detection

D. Likhachov, Maxim Vashkevich, N. Petrovsky, E. Azarov
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Abstract

The task of detecting vocal abnormalities is characterized by a small amount of available data for training, as a consequence of which classification systems that use low-dimensional data are the most relevant. We propose to use LASSO (least absolute shrinkage and selection operator) and BSS (backward stepwise selection) methods together to select the most significant features for the detection of vocal pathologies, in particular amyotrophic lateral sclerosis. Features based on fine-frequency cepstral coefficients, traditionally used in speech signal processing, and features based on discrete estimation of the autoregressive spectrum envelope are used. Spectral features based on the autoregressive process envelope spectrum are extracted using the generative method, which involves calculating a discrete Fourier transform of the report sequence generated using the autoregressive model of the input voice signal. The sequence is generated by the autoregressive model so as to account for the periodic nature of the Fourier transform. This improves the accuracy of the spectrum estimation and reduces the spectral leakage effect. Using LASSO in conjunction with BSS allowed us to improve the classification efficiency using a smaller number of features as compared to using the LASSO method alone.
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语音病理学检测中信息特征选择的组合方法
检测嗓音异常的任务的特点是有少量可用于训练的数据,因此使用低维数据的分类系统是最相关的。我们建议将LASSO(最小绝对收缩和选择算子)和BSS(反向逐步选择)方法结合使用,以选择最显著的特征来检测嗓音病理,特别是肌萎缩侧索硬化症。使用传统上用于语音信号处理的基于精细频率倒谱系数的特征,以及基于自回归频谱包络的离散估计的特征。使用生成方法提取基于自回归过程包络谱的谱特征,该方法包括计算使用输入语音信号的自回归模型生成的报告序列的离散傅立叶变换。序列是由自回归模型生成的,以便说明傅立叶变换的周期性。这提高了频谱估计的准确性并减少了频谱泄漏效应。与单独使用LASSO方法相比,将LASSO与BSS结合使用使我们能够使用较少数量的特征来提高分类效率。
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发文量
87
审稿时长
8 weeks
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