Foyzul Hassan, Mohammed Rokibul Alam Kotwal, M. N. Huda
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引用次数: 4
摘要
本研究为孟加拉语(俗称孟加拉语)的所有发音音素构建了一个语音特征表,整个研究分为两个部分。在第一部分中,构造了一个PF表,而第二部分处理使用PF的孟加拉语自动语音识别(ASR)。对于孟加拉语,考虑了包括元音和辅音在内的53个音素,其中电话k (/s/)和m (/s/), Y (/n/)和b (/n/)包含大致相同的频谱,因此它们具有相同的PFs。在PF表中,需要22个PF (Silence, Short Silence, Stop,…)来表示所有的孟加拉语音素。另一方面,第二部分由三个阶段组成:i)第一阶段处理声学特征,mel频率倒谱系数(MFCCs)提取,ii)第二阶段使用多层神经网络(MLN)嵌入pf提取过程,iii)最后阶段集成基于三音符的隐马尔可夫模型(HMM),通过输入22维pf的对数值来生成输出文本字符串。在对孟加拉语报刊文章句子的实验中,我们观察到基于pf的ASR系统比基于mfc的标准方法提供了更高的单词正确率、单词正确率和句子正确率。
Bangla phonetic feature table construction for automatic speech recognition
This This research constructs a phonetic feature (PF) table for all the phonemes pronounced in Bangla (widely known as Bengali) language where the whole study is divided into two parts. In the first part, a PF table is constructed, while the second part deals with Bangla automatic speech recognition (ASR) using PFs. For Bangla language, fifty three phonemes including both vowels and consonants are considered in which the phones, k (/s/) and m (/s/), and, Y (/n/) and b (/n/) contain approximately same spectrum and hence, they share same PFs. In the PF table, twenty two PFs (Silence, Short Silence, Stop, ...) are required for representing all the Bangla phonemes. On the other hand, the second part comprised of three stages: i) first stage deals with acoustic features, mel frequency cepstral coefficients (MFCCs) extraction, ii) second stage embeds PFs extraction procedure using a multilayer neural network (MLN) and iii) the final stage integrates a triphone-based hidden Markov model (HMM) for generating the output text strings by inputting log values of twenty two dimensional PFs. In the experiments on Bangla Newspaper Article Sentences, it is observed that the PF-based ASR system provides higher word correct rate, word accuracy and sentence correct rate in comparison with the standard MFCC-based method.