通过mel频率倒谱系数的声学声音分析自动检测早期帕金森病

Laetitia Jeancolas, H. Benali, B. Benkelfat, G. Mangone, J. Corvol, M. Vidailhet, S. Lehéricy, D. Petrovska-Delacrétaz
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引用次数: 32

摘要

声音障碍是帕金森病(PD)中最早出现的紊乱形式之一。大多数旨在通过声学分析检测帕金森病的研究都使用全局参数。同时,在说话人和语音识别中,通过短期参数进行分析,更精确地使用Mel-Frequency倒谱系数(MFCC)结合高斯混合模型(GMM)进行分析。本文提出了一种经典的方法,用于说话人识别检测帕金森病的早期阶段。在四个任务中进行自动分析:持续元音、快速音节重复、自由言论和阅读。为了提高分类性能,将男性和女性分开考虑。根据语音任务和性别的不同,交叉验证的准确率从60%到91%不等。在阅读任务中达到最佳表现(男性91%)。采用简单快速的方法获得的这种准确率与文献中采用更复杂的方法获得的早期PD检测的最佳分类结果一致。
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Automatic detection of early stages of Parkinson's disease through acoustic voice analysis with mel-frequency cepstral coefficients
Vocal impairments are one of the earliest disrupted modalities in Parkinson's disease (PD). Most of the studies whose aim was to detect Parkinson's disease through acoustic analysis use global parameters. In the meantime, in speaker and speech recognition, analyses are carried out by short-term parameters, and more precisely by Mel-Frequency Cepstral Coefficients (MFCC), combined with Gaussian Mixture Models (GMM). This paper presents an adaptation of the classical methodology used in speaker recognition to the detection of early stages of Parkinson's disease. Automatic analyses were performed during 4 tasks: sustained vowels, fast syllable repetitions, free speech and reading. Men and women were considered separately in order to improve the classification performance. Leave one subject out cross validation exhibits accuracies ranging from 60% to 91% depending on the speech task and on the gender. Best performances are reached during the reading task (91% for men). This accuracy, obtained with a simple and fast methodology, is in line with the best classification results in early PD detection found in literature, obtained with more complex methods.
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