Extraction of Local Features for Tri-Phone Based Bangla ASR

Mohammed Rokibul Alam Kotwal, Tasneem Halim, Md. Mehedi Hassan Almaji, Imtiaz Hossain, M. N. Huda
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引用次数: 4

Abstract

Inherent features of the Bangla (widely used as Bengali) language like long and short vowels and many instances of allophones make it difficult to build a continuous speech recognizer for the language. Stress and accent vary in spoken Bangla language from region to region. But in formal read Bangla speech, stress and accents are ignored. There are three approaches to continuous speech recognition (CSR) based on the sub-word unit viz. word, phoneme and syllable. Pronunciation of words and sentences are strictly governed by set of linguistic rules. Many attempts have been made to build continuous speech recognizers for Bangla for small and restricted tasks. However, medium and large vocabulary CSR for Bangla is relatively new and not explored. In this paper, the authors have attempted for extracting local features (LFs) from a Bangla input speech for tri-phone based automatic speech recognition (ASR) method. The method comprises two stages, where the first stage extracts LFs from input speech and the final stage generates word strings based on trip hone hidden Markov models (HMMs). The objective of this research is to build a medium vocabulary trip hone based continuous speech recognizer for Bangla language by extracting LFs over mel frequency cepstral coefficients (MFCCs). In this experimentation using Bangla speech corpus prepared by us, the recognizer provides higher word accuracy, word correct rate as well as sentence correct rate for trained and tested sentences with fewer mixture components in HMMs.
基于三手机的孟加拉语ASR局部特征提取
孟加拉语(被广泛使用为孟加拉语)的固有特征,如长元音和短元音以及许多音素的实例,使得为该语言构建连续语音识别器变得困难。孟加拉语的重音和口音因地区而异。但是在正式的孟加拉语演讲中,重音和口音被忽略了。基于子词单位的连续语音识别有三种方法,即词、音素和音节。单词和句子的发音受到一套语言规则的严格控制。许多人尝试为孟加拉语构建连续语音识别器,用于小型和受限的任务。然而,孟加拉语的中、大词汇CSR相对较新,尚未被探索。在本文中,作者尝试从基于三电话的自动语音识别(ASR)方法的孟加拉语输入语音中提取局部特征(LFs)。该方法分为两个阶段,第一阶段从输入语音中提取LFs,最后阶段基于隐马尔可夫模型(hmm)生成词串。本研究的目的是通过提取孟加拉语的低频倒谱系数(MFCCs),建立一个基于中等词汇量的孟加拉语连续语音识别器。在使用我们准备的孟加拉语语料库的实验中,识别器对hmm中混合成分较少的训练和测试句子提供了更高的单词准确率、单词正确率和句子正确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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