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Time-frequency approach in continuous speech for detection of Parkinson's disease

机译:帕金森病检测的连续语音时频方法

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In this paper low-frequency analysis is addressed in order to explore components of continuous speech signals, trying to making evident the changes in the spectrum, which could be associated to the tremor in speech of people with Parkinson's disease. Four time-frequency (TF) techniques based on Wigner-Ville distribution (WVD) are used for the characterization of the low frequency content of the speech signals. The set of features includes centroids and the energy content of different frequency bands, due to the assumptions of non-stationary was taken into a account using enough time frameworks. The discrimination capability of the estimated features is evaluated using a support vector machine (SVM). The results show that the low frequency components are able to discriminate between pathological and healthy speakers with an accuracy of 72%.
机译:在本文中,解决了低频分析,以便探索连续语音信号的组成部分,试图明确频谱的变化,这可能与帕金森病的人们的讲话中的震颤相关联。基于Wigner-Ville分布(WVD)的四个时间频率(TF)技术用于语音信号的低频含量的表征。由于使用足够的时间框架将非静止的假设置于账户,因此包括质心和不同频带的能量含量。使用支持向量机(SVM)评估估计特征的判别能力。结果表明,低频分量能够区分病理和健康扬声器,精度为72%。

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