基于模糊逻辑的语音病理检测

D. Panek, A. Skalski, Janusz Gajda
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引用次数: 3

摘要

本文采用一种高效的特征提取方法和基于模糊逻辑的障碍评估技术,对功能性发声障碍、功能性发声障碍、声带麻痹和喉炎患者的语音信号进行了研究。在这项工作中,由28个声学参数组成的矢量是主成分分析、核主成分分析和自关联神经网络的输入。利用模糊逻辑的s形隶属函数,将信号聚类为健康和病理两类。正常和病理语音信号在其相应的聚类中的模糊隶属度是量化特定类特征的隶属度的一种措施。最后,采用s形模糊逻辑方法作为语音病理检测的一种方法。使用初始的28个特征向量实现了高达100%的分类准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Voice pathology detection by fuzzy logic
In this paper an efficient feature extraction methods and fuzzy logic based disorder assessment technique were used to investigate voice signals of patients suffering from functional dysphonia, hyperfunctional dysphonia, vocal cord paralysis and laryngitis. In this work, a vector made up from 28 acoustic parameters was an input for Principal Component Analysis, kernel Principal Component Analysis and Auto-associative Neural Network. Using S-shaped membership function of fuzzy logic, signals were clustered into 2 classes - healthy and pathology one. The amount of fuzzy membership of normal and pathological voice signals in their corresponding clusters was a measure to quantify the membership of the features of a particular class. In the end, S-shaped fuzzy logic method was used as a way of voice pathology detection. A classification accuracy up to 100 percent was achieved using initial 28 feature vector.
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