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Continuous Speech Classification Systems for Voice Pathologies Identification

机译:用于语音病理识别的连续语音分类系统

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Voice pathologies identification using speech processing methods can be used as a preliminary diagnostic. The aim of this study is to compare the performance of sustained vowel /a/ and continuous speech task in identification systems to diagnose voice pathologies. The system recognizes between three classes consisting of two different pathologies sets and healthy subjects. The signals are evaluated using MFCC (Mel Frequency Cepstral Coefficients) as speech signal features, applied to SVM (Support Vector Machines) and GMM (Gaussian Mixture Models) classifiers. For continuous speech, the GMM system reaches 74% accuracy rate while the SVM system obtains 72% accuracy rate. For the sustained vowel /a/, the accuracy achieved by the GMM and the SVM is 66% and 69% respectively, a lower result than with continuous speech.
机译:使用语音处理方法的语音病理识别可以用作初步诊断。这项研究的目的是比较持续元音/ a /和连续语音任务在识别系统中诊断语音病理的性能。该系统识别由两种不同病理学组和健康受试者组成的三类。使用MFCC(梅尔频率倒谱系数)作为语音信号特征来评估信号,并将其应用于SVM(支持向量机)和GMM(高斯混合模型)分类器。对于连续语音,GMM系统达到74%的准确率,而SVM系统获得72%的准确率。对于持续元音/ a /,GMM和SVM所达到的准确度分别为66%和69%,比连续语音的结果要低。

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