用于语音信号分析和分类任务的机器学习的小尺寸频谱特征

IF 3.4 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Informatics Pub Date : 2023-03-29 DOI:10.37661/1816-0301-2023-20-1-102-112
D. Likhachov, Maxim Vashkevich, N. Petrovsky, E. Azarov
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引用次数: 1

摘要

目标。正在解决开发一种用于计算小尺寸频谱特征的方法的问题,该方法提高了用于分析和分类语音信号的现有机器学习系统的效率。方法。使用生成方法提取频谱特征,该方法包括计算使用输入语音信号的自回归模型生成的样本序列的离散傅立叶频谱。通过离散傅立叶变换处理的生成序列考虑了变换的周期性,从而提高了分析信号的频谱估计的准确性。后果提出并描述了一种用于计算频谱特征的生成方法,该方法旨在用于语音信号的分析和分类的机器学习系统。使用包络线对具有已知频谱组成的测试信号的频谱表示的准确性和稳定性进行了实验分析。使用所提出的生成方法并使用具有不同分析窗口(矩形窗口和Hanna窗口)的离散傅立叶变换来计算包络。分析表明,根据最小平方误差准则,该方法得到的频谱包络更准确地表示了测试信号的频谱。对所提出的特征和基于mel频率kepstral系数的特征的语音信号分类的有效性进行了比较。肌萎缩侧索硬化症的诊断系统被用作基本测试系统,以评估所提出的方法在实践中的有效性。结论。所获得的实验结果表明,与基于mel频率kepstral系数的特征相比,当使用所提出的方法来计算特征时,分类精度显著提高。
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Small-size spectral features for machine learning in voice signal analysis and classification tasks
Objectives. The problem of developing a method for calculating small-sized spectral features that increases the efficiency of existing machine learning systems for analyzing and classifying voice signals is being solved.Methods. Spectral features are extracted using a generative approach, which involves calculating a discrete Fourier spectrum for a sequence of samples generated using an autoregressive model of input voice signal. The generated sequence processed by the discrete Fourier transform considers the periodicity of the transform and thereby increase the accuracy of spectral estimation of analyzed signal.Results. A generative method for calculating spectral features intended for use in machine learning systems for the analysis and classification of voice signals is proposed and described. An experimental analysis of the  accuracy and stability of the spectrum representation of a test signal with a known spectral composition has been carried out using the envelopes. The envelopes were calculated using  proposed generative method and using discrete Fourier transform with different analysis windows (rectangular window and Hanna window).  The analysis showed that spectral envelopes obtained using the proposed method more accurately represent the spectrum of test signal according to the criterion of minimum square error. A comparison of the effectiveness of voice signal classification with proposed features and the features based on the mel-frequency kepstral  coefficients is carried out. A diagnostic system for amyotrophic lateral sclerosis was used as a basic test system to evaluate the effectiveness of proposed approach in practice. Conclusion. The obtained experimental results showed a significant increase of classification accuracy when using proposed approach for calculating features compared with the features based on the mel-frequency kepstral coefficients.
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来源期刊
Informatics
Informatics Social Sciences-Communication
CiteScore
6.60
自引率
6.50%
发文量
88
审稿时长
6 weeks
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