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Phonological i-Vectors to Detect Parkinson's Disease

机译:语音I - 载体检测帕金森病

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Speech disorders are common symptoms among Parkinson's disease patients and affect the speech of patients in different aspects. Currently, there are few studies that consider the phonological dimension of Parkinson's speech. In this work, we use a recently developed method to extract phonological features from speech signals. These features are based on the Sound Patterns of English phonological model. The extraction is performed using pre-trained Deep Neural Networks to infer the probabilities of phonological features from short-time acoustic features. An i-vector extractor is trained with the phonological features. The extracted i-vectors are used to classify patients and healthy speakers and assess their neurological state and dysarthria level. This approach could be helpful to assess new specific speech aspects such as the movement of different articulators involved in the speech production process.
机译:语音障碍是帕金森病患者的常见症状,并影响不同方面的患者的言论。目前,很少有考虑帕金森讲话的语音维度。在这项工作中,我们使用最近开发的方法从语音信号中提取语音特征。这些功能基于英语语音模型的声音模式。使用预先训练的深神经网络进行提取,以推断出短时间声学特征的音韵特征的概率。 I-Vector Extrutipler培训具有语音功能。提取的I-载体用于对患者和健康的扬声器进行分类,并评估其神经状态和扰动性水平。这种方法可以有助于评估新的特定语音方面,例如语音生产过程中涉及的不同关节者的运动。

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