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Bangla ASR design by suppressing gender factor with gender-independent and gender-based HMM classifiers

机译:通过使用性别无关和基于性别的HMM分类器抑制性别因素来设计Bangla ASR

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Hidden factor such as gender characteristic plays an important role on the performance of Bangla (widely used as Bengali) automatic speech recognition (ASR). If there is a 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 our previous paper, we proposed a technique of gender effects suppression that composed of two hidden Markov model (HMM)-based classifiers that focused on a gender factor. In the proposed study, we have designed a new ASR for Bangla by suppressing the gender effects, which embeds three HMM-based classifiers for corresponding male, female and geneder-independent (GI) characteristics. In an experiment on Bangla speech database prepared by us, the proposed system that incorporates GI-classifier has achieved a significant improvement of word correct rate, word accuracy and sentence correct rate in comparison with our previous method that did not incorporate GI-classifier.
机译:诸如性别特征之类的隐性因素对孟加拉语(广泛用作孟加拉语)自动语音识别(ASR)的性能起着重要作用。如果存在抑制过程来抑制由性别因素导致的类别之间的声音似然性差异的减小,则可以实现强大的ASR系统。在我们以前的论文中,我们提出了一种性别影响抑制技术,该技术由两个基于性别因子的隐马尔可夫模型(HMM)基于分类器组成。在拟议的研究中,我们通过抑制性别影响为孟加拉设计了一种新的ASR,其中嵌入了三个基于HMM的分类器,分别用于相应的男性,女性和不依赖性别的特征(GI)。在我们准备的Bangla语音数据库上进行的一项实验中,与我们以前未包含GI分类器的方法相比,该包含GI分类器的系统在单词正确率,单词准确性和句子正确率方面有了显着提高。

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