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Classification of normal and pathological voices using TEO phase and Mel cepstral features

机译:使用两个相位和梅尔倒谱特征对正常声音和病理声音进行分类

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In this paper, a new feature-set, viz., Teager Energy Operator (TEO) phase has been proposed for automatic classification of normal vs. pathological voices. Development of TEO phase has been motivated from recently proposed linear prediction (LP) residual phase for speaker recognition. Classification was performed using a discriminatively-trained 2nd order polynomial classifier on a subset of the Massachusetts Ear and Eye Infirmary (MEEI) database. Score-level fusion of TEO phase and state-of-the-art Mel frequency cepstral coefficients (MFCC) gave reduction in equal error rate (EER) by 1.86 % than EER of MFCC alone. Proposed TEO phase feature set is also evaluated under degraded conditions using the NOISEX-92 database for the case of additive car noise.
机译:在本文中,提出了一种新的功能集,即Teager能量算子(TEO)阶段,用于正常声音与病理声音的自动分类。 TEO相位的发展是受最近提出的用于说话人识别的线性预测(LP)残留相位的推动。分类是在马萨诸塞州耳眼医院(MEEI)数据库的子集中使用经过判别训练的2 多项式分类器进行的。 TEO相位和最新的梅尔频率倒谱系数(MFCC)的得分级融合使平均错误率(EER)比单独的MFCC降低了1.86%。拟议的TEO相位特征集也会在降级条件下使用NOISEX-92数据库进行评估,以解决汽车噪声的情况。

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