设计基于hmm的多分类器对孟加拉语ASR性别抑制的影响

Mohammed Rokibul Alam Kotwal, Foyzul Hassan, Md. Shafiul Alam, Shakib Ibn Daud, Faisal Ahmed, M. N. Huda
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引用次数: 7

摘要

说话人特征对孟加拉语自动语音识别(ASR)的性能起着重要的作用。识别受性别因素影响的语音是很困难的,特别是当ASR系统只包含单一的声学模型时。如果存在任何抑制过程,可以抑制因性别因素而导致的类别间声似然差异的减少,则可以实现鲁棒的ASR系统。在本文中,我们提出了一种性别效应抑制技术,该技术由两个基于隐马尔可夫模型(HMM)的分类器组成,并专注于性别因素。在我们准备的孟加拉语语音数据库上进行的实验中,所提出的系统在单词正确率、单词正确率和句子正确率上都比仅使用基于hmm的单个分类器的方法有了显著的提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Gender Effects Suppression in Bangla ASR by Designing Multiple HMM-Based Classifiers
Speaker-specific characteristics play an important role on the performance of Bangla (widely used as Bengali) automatic speech recognition (ASR). It is difficult to recognize speech affected by gender factors, especially when an ASR system contains only a single acoustic model. If there exists any suppression process that represses the decrease of differences in acoustic-likelihood among categories resulted from gender factors, a robust ASR system can be realized. In this paper, we have proposed a technique of gender effects suppression that composed of two hidden Markov model (HMM)-based classifiers and that focused on a gender factor. In an experiment on Bangla speech database prepared by us, the proposed system has provided a significant improvement of word correct rate, word accuracy and sentence correct rate in comparison with the method that incorporates only a single HMM-based classifier for both male and female speakers.
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