基于局部特征的性别独立孟加拉语ASR

K. N. Babi, Mohammed Rokibul Alam Kotwal, Foyzul Hassan, M. N. Huda
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引用次数: 3

摘要

本文提出了一种基于从输入语音中提取的局部特征来抑制说话人性别类型的孟加拉语自动语音识别方法。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。性别因素在分类器识别异性语音时表现出不利影响,如由男性训练分类器而由女性进行测试或反之亦然。为了在实践中获得一个强大的ASR系统,有必要发明一个针对特定性别的包含性别独立效应的系统。在本文中,我们提出了一种性别无关的ASR技术,主要关注性别因素。该方法对分类器进行了男性和女性两种性别类型的训练,并对分类器进行了男性和女性的评价。在实验中,我们为男性和女性设计了一个中等大小的孟加拉语(俗称孟加拉语)语音语料库。与受性别影响的方法相比,该系统在单词正确率、单词正确率和句子正确率上都有了显著提高。此外,该方法在隐马尔可夫模型(hmm)中采用较少的混合成分,从而提供了最高水平的识别性能。
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Local feature based gender independent bangla ASR
This paper presents automatic speech recognition (ASR) for Bangla (widely used as Bengali) by suppressing the speaker gender types based on local features extracted from an input speech. Speaker-specific characteristics play an important role on the performance of Bangla automatic speech recognition (ASR). Gender factor shows adverse effect in the classifier while recognizing a speech by an opposite gender, such as, training a classifier by male but testing is done by female or vice-versa. To obtain a robust ASR system in practice it is necessary to invent a system that incorporates gender independent effect for particular gender. In this paper, we have proposed a Gender-Independent technique for ASR that focused on a gender factor. The proposed method trains the classifier with the both types of gender, male and female, and evaluates the classifier for the male and female. For the experiments, we have designed a medium size Bangla (widely known as Bengali) speech corpus for both the male and female. The proposed system has showed a significant improvement of word correct rates, word accuracies and sentence correct rates in comparison with the method that suffers from gender effects using. Moreover, it provides the highest level recognition performance by taking a fewer mixture component in hidden Markov model (HMMs).
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