基于小波变换的病理性语音检测

C. Vikram, K. Umarani
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引用次数: 1

摘要

提出了一种与音素无关的病理语音检测方法。记录正常人和语音障碍患者的音素/a/、/i/、/u/。该系统采用基于小波变换的Mel频率倒谱系数(MFCCs)作为特征,将其用于高斯混合模型-通用背景模型(GMM-UBM)分类器。计算各小波子带的mfccc,得到GMM-UBM分数。通过综合各个子波段的GMM-UBM分数进行决策。将18MFCC特征赋予GMM-UBM分类器时,准确率达到85.18%。而当给出基于小波变换的18mfcc时,准确率为93.32%,说明基于小波变换的mfcc提高了分类精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Wavelet Based MFCC Approach for the Phoneme Independent Pathological Voice Detection
This paper proposes a new approach for the phoneme independent pathological voice detection. The phonemes /a/, /i/, /u/ from normal and subjects suffering from voice disorders are recorded. The system uses wavelet based Mel Frequency Cepstral Coefficients (MFCCs) as features, which are given to Gaussian Mixture Model-Universal Background Model (GMM-UBM) classifier. The MFCCs are computed for each wavelet sub band and GMM-UBM score is obtained. The decision is taken by combining GMM-UBM scores of individual sub bands. When the 18MFCC features are given to GMM-UBM classifier it can be seen that the accuracy is 85.18%. But when the wavelet based 18MFCCs are given, the accuracy is 93.32%, which indicates that wavelet based MFCCs improves the classification accuracy.
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