Study on Bangla Phonetic Features
Date
2018-10-10Author
Rakib, Md. All-Mosabbir
Aktar, Sumaia
Tarik, Md. Tarikuzzaman
Chowdhury, Ikbal Hossain
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Speech recognition is one of the most important computer technologies for Automatic
Speech Recognition (ASR) model. ASR model have to enables device for recognize and
very better known as Bangla word. ASR model check sound and digitizing and also
matching the word pattern for stored patterns. We have to see after recognize normal
speech not better than discrete speech. Now, we can detect continuous speech (Normal
Speech) for used a system. Its helps people about working for disabilities.
We used a system which is new approach for buildup in top position Bangla ASR model.
Its MFCC based system used for better word recognition performance. Maximum cases
used in small no. of speaker, but Bangladesh most of the wide area are used in native
language. We can experiments about this language as a inputs are Mel-Frequency
Cepstral Coefficients (MFCCs) and result will be based on Hidden Markov Model
(HMM) classifier for word recognition performance.
We can experiments about other ASR models, firstly we used MFCC-39 based classifier
and now we can used Articulatory features AF-22 based classifier for male and female
voice. Then, we can see word correct rate and accuracy will be much better than MFCC-
39 based classifier. That’s why our suggest system help for detect gender voice and
independent fact.
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