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Automatic Detection of Parkinson's Disease in Reverberant Environments

机译:在混响环境中自动检测帕金森氏病

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Automatic classification of speakers with Parkinson's disease (PD) and healthy controls (HC) is performed considering a method for the characterization of the speech signals which is based on the estimation of the energy content of the unvoiced frames. The method is tested with recordings of three languages: Spanish, German, and Czech. Additionally, the signals are affected by two different reverberant scenarios in order to validate the robustness of the proposed method. The obtained results range from 85% to 99% of accuracy depending on the speech task, the spoken language, and the recording scenario. The method shows to be accurate and robust even when the signals are reverberated. This work is a step forward to the development of methods to assess the speech of PD patients without requiring special acoustic conditions.
机译:考虑到语音信号表征的方法,对说话人的帕金森氏病(PD)和健康对照(HC)进行自动分类,该方法基于对清音帧能量含量的估计。该方法通过三种语言的录音进行测试:西班牙语,德语和捷克语。此外,信号受到两种不同混响方​​案的影响,以验证所提出方法的鲁棒性。根据语音任务,口语和录音场景,获得的结果的准确度范围为85%至99%。该方法即使在信号被混响时也显示出准确和鲁棒的效果。这项工作是在无需特殊声学条件的情况下开发评估PD患者言语方法的一步。

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