O. Lachhab, J. D. Martino, E. I. Elhaj, A. Hammouch
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引用次数: 5
摘要
本文在法国病理语音数据库FPSD (French pathological speech database)的基础上,提出了一种基于说话人依赖模式的连续语音识别方法,对病理语音(食道)进行简单快速的评估。所使用的识别系统是基于HMM/GMM单声道模型的HTK平台实现的。采用异方差线性判别分析(Heteroscedastic Linear Discriminant Analysis, hda)方法对声向量进行线性变换,使其在较小的空间内减小,具有良好的判别性。当我们知道食管语音中含有不自然的、难以理解的声音时,所获得的电话识别率(63.59%)是非常有希望的。
Improving the recognition of pathological voice using the discriminant HLDA transformation
In this paper, we propose a simple and fast method for evaluating the pathological voice (esophageal) by applying the continuous speech recognition in a speaker dependent mode, on our own database of the pathological voice, we call FPSD (French Pathological Speech Database). The recognition system used is implemented using the HTK platform, based on HMM/GMM monophone models. The acoustic vectors are linearly transformed by the HLDA (Heteroscedastic Linear Discriminant Analysis) method to reduce their size in a smaller space with good discriminative properties. The obtained phone recognition rate (63.59 %) is very promising when we know that esophageal voice contains unnatural sounds, difficult to understand.