I am working / researching a project idea for educational purposes and want to do the project about speech recognition, nothing too big just an introduction to get my started in the field. Basically, the project and algorithm will take an input of a (.wav) file and then identify if the person speaking is either saying "Yes" or saying "No". I'm looking to use Linear Predictive Coding.
Basically, in my head, I'm thinking of the following Algorithm:
- Read in the .wav (raw data) into a vector
- Split the vector into equal size blocks
- Process each block for particular characteristics
- Find the word whose model is the most likely match to the string of phones which was produced.
Then I would like to use similarity measures such as Correlation to find the correct Phone(s).
So, basically, after the data file has been read in, and, split into blocks.. It should/would contain like this:
rawdata =  => 'Y',  => 'E',  => 'S'
Or will contain the frequency result which can then be compared with the Phones.
My question is, does this look like a good algorithm to work off to solve the problem..
My next question:
When I try to read in a .wav file into memory, I get (Kind of) the following results..
20 30 10 30 40 50 .. 20 20 .. 10 20 .. 60 40 10 20 30 40 50 60 ... .. . . . .
They are all integer values, so, once I have taken all the header information.. The rest of the data is what I need to convert into the correct medium and then this is the data..? I'm kinda confused.
Hope someone can help me, and, I've written the problem out correctly. Thanks.