Classification of Parkinson Disease Based on Analysis and Synthesis of Voice Signal

Vikas Mittal, R. Sharma
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引用次数: 2

Abstract

The most important application of voice profiling is pathological voice detection. Parkinson's disease is a chronic neurological degenerative disease affecting the central nervous system responsible for essentially progressive evolution movement disorders. 70% to 90% of Parkinson’s disease (PD) patients show an affected voice. This paper proposes a methodology for PD based on acoustic, glottal, physical, and electrical parameters. The results show that the acoustic parameter is more important in the case of Parkinson’s disease as compared to glottal and physical parameters. The authors achieved 97.2% accuracy to differentiate Parkinson and healthy voice using jitter to pitch ratio proposed algorithm. The Authors also proposed an algorithm of poles calculation of the vocal tract to find formants of the vocal tract. Further, formants are used for finding the transfer function of vocal tract filter. In the end, the authors suggested parameters of the electrical vocal tract model are also changed in the case of PD voices.
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基于语音信号分析与合成的帕金森病分类
语音分析最重要的应用是病理语音检测。帕金森病是一种影响中枢神经系统的慢性神经退行性疾病,主要导致进行性进化运动障碍。70%到90%的帕金森氏症(PD)患者表现出声音受损。本文提出了一种基于声学、声门、物理和电参数的PD方法。结果表明,在帕金森病的情况下,声学参数比声门和物理参数更重要。采用抖动音高比算法对帕金森音和健康音进行区分,准确率达到97.2%。作者还提出了一种声道极点计算算法来寻找声道共振峰。进一步,利用共振峰求解声道滤波器的传递函数。最后,作者建议在PD的情况下也改变电声道模型的参数。
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