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Voiceprint analysis using Perceptual Linear Prediction and Support Vector Machines for detecting persons with Parkinson's disease

机译:使用感知线性预测和支持向量机检测帕金森病

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In the aim of developing the assessment of speech disorders for detecting patients with Parkinson's disease (PD), we have collected 34 sustained vowel /a/, from 34 subjects including 17 PD patients. We subsequently extracted from 1 to 20 coefficients of the Perceptual Linear Prediction (PLP) from each individual. To extract the voiceprint from each individual, we compressed the frames by calculating their average value. For classification, we used the Leave-One-Subject-Out (LOSO) validation scheme along with the Support Vector Machines (SVMs) with its different types of kernels, (i.e.; RBF, Linear and polynomial). The best classification accuracy achieved was 82.35% using the first 13 and 14 coefficients of the PLP by Linear kernels SVMs.
机译:旨在制定对检测帕金森病(PD)患者进行语音疾病的评估,我们从34名受试者收集了34个持续的元音/ A /,其中包括17名PD患者。我们随后从每个人提取1至20系数的感知线性预测(PLP)。要从每个人中提取声明图,我们通过计算平均值来压缩帧。对于分类,我们使用休假 - 单位出局(LOSO)验证方案以及带有不同类型的核(即; RBF,线性和多项式)的支持向量机(SVM)。通过线性核SVMS使用PLP的第一13和14系数实现的最佳分类精度为82.35%。

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