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I spent whole last week to search on MFCC and related issues. Now I can get MFCC features from a .wav file in a 2-dimensional vector, coff[56][12], let's say. 12 is the number of coefficents I want to extract and 56 is the number of frames. According to several documents I read, we can use above 12 coefficents to recognize speech (in particular, I want to recognize word "one", "two"... to "ten"). But now I get 56 of 12-cofficents, so which one among 56 frames I should use?

If I got something wrong, please help me!!!

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1 Answer 1

You are skipping some crucial steps. Let me briefly explain how it should work. Speech data is initially a discrete signal. You cut it into pieces called "frames" so small that each piece hopefully contain no more than a single phone. Often frames are overlapped to not to lost any vital information. Then you extract features - MFCCs and using Hidden Makov Model search for the most probable word that comprises a number of frames. At this time you also need a dictionary of words pronunciation and the acoustic model. On the next level you use a language model that describes sentences the words can be constructed into, and get the final hypothesis. This is extremely abstract description, so need to review each step of decoding on a closer extent.

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Thanks for quick reply. You mean after extracting MFCC features I have to use Hidden Makov Model to find in the "dictionary of words" a word that is the most probable? –  duong_dajgja Nov 17 '13 at 7:35
Dictionary tells how words are constructed from syllables. Here is a paste from a real dictionary: hello [HH AH L OW], hello(2) [HH EH L OW]. Now using MFCCs and the acoustic model you can obtain probability that a certain sequence of frames corresponds to a particular word. Take a look at cmusphinx.sourceforge.net You would be interested in sphinxbase and pocketsphinx in particular. The formed is an asset library for speech recognition, and the later is end-to-end speech decoder. Also you can read "Spoken Language Processing" which is quite comprehensive. –  Alexander Solovets Nov 17 '13 at 8:04

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