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Wavelet Transform Features to Hybrid Classifier for Detection of Neurological-Disordered Voices

机译:用于检测神经无序声音的混合分类器的小波变换特征

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Neurological problems may lead to speech-related disorders because of improper movements of vocal fold or incomplete closure of glottis. This may alter the acoustic characteristics of voice signal, which may provide valuable clues for diagnosing certain neurological diseases. In this work, the wavelet transform and Mel-frequency cepstral coefficients, which are features of short-time analysis techniques, fused with the time-domain features, and given to a hybrid model designed using Gaussian mixture model (GMM) and support vector machines (SVM). The fusion of features and fusion of different classifiers are carried out to avoid the generation of large feature space, complexity, and delayed results. Linear predictive coded-Mel-frequency cepstral coefficients computed for selected 6-level discrete wavelet transform are given to GMM. The output of which is combined with SVM scores obtained with time-domain features as input and given to another SVM, which makes the decision to classify the data as normal or neurological-disordered voice. It is observed that this hybrid classifier model has shown an improvement with a classification accuracy of 94.3% compared with individual SVM classifier with time-domain features with 81.43% and the GMM-SVM classifier with 85.71 %.
机译:由于声音折叠或不完全闭合的光泽,神经系统问题可能导致语音相关的疾病。这可以改变语音信号的声学特性,其可以提供用于诊断某些神经疾病的有价值的线索。在这项工作中,小波变换和熔融频率谱系数,这是短时间分析技术的特征,与时域特征融合,并给出使用高斯混合模型(GMM)设计的混合模型,并支持向量机(SVM)。进行了不同分类器的特征和融合的融合,以避免产生大的特征空间,复杂性和延迟结果。为选定的6级离散小波变换计算的线性预测编码 - 膜频率谱系数给GMM。其中的输出与时域特征的输入和给予另一个SVM的SVM分数组合,这使得决定将数据分类为正常或神经系统无序的声音。观察到,与具有81.43%的时域特征和85.71%的GMM-SVM分类器,该混合分类器模型的分类精度为94.3%的分类精度,其分类精度为94.3%。

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