Combined speech decoders output for phoneme recognition enhancement

K. Abida, F. Karray, W. Abida
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引用次数: 2

Abstract

Phoneme recognition is an essential component of any robust speech decoder and has been tackled by many researchers. Speech feature extraction constitutes the front end module of any speech decoder: it plays an essential role and has a strong impact on the recognition performance. The research community is aggressively searching for more powerful solutions which combine the existing feature extraction methods for a better and more reliable information capture from the analog speech signal. In this research work, we propose new approaches to combining phoneme recognizers' output in order to provide better recognition performance and improved robustness with respect to noise and channel distortions. Machine learning tools such as the Naive Bayes Classifier, Decision Trees, and Support Vector Machines have been used in the combination of hypotheses. Experiments under different SNR levels have proven that our proposed approach outperforms the two most common feature extraction techniques, namely Mel Frequency Cepstral Coefficients (MFCC) and Perceptual Linear Prediction(PLP) with Cepstral Mean Subtraction (CMS) and RASTA respectively, for channel normalization.
组合语音解码器输出音位识别增强
音素识别是任何强大的语音解码器的重要组成部分,已经被许多研究人员所解决。语音特征提取是任何语音解码器的前端模块,对语音解码器的识别性能起着至关重要的作用。研究界正在积极寻找更强大的解决方案,将现有的特征提取方法结合起来,从模拟语音信号中获得更好、更可靠的信息。在这项研究工作中,我们提出了新的方法来结合音素识别器的输出,以提供更好的识别性能和提高对噪声和信道失真的鲁棒性。机器学习工具,如朴素贝叶斯分类器、决策树和支持向量机已被用于组合假设。在不同信噪比水平下的实验证明,我们提出的方法优于两种最常见的特征提取技术,即Mel频率倒谱系数(MFCC)和感知线性预测(PLP),分别使用倒谱平均减法(CMS)和RASTA进行信道归一化。
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