Word comparison using frequency domain.

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Leon Ellis
Leon Ellis am 12 Nov. 2021
Kommentiert: Leon Ellis am 17 Nov. 2021
Good day, I've managed to get the following from a sound wave using the FFT function:
The red circles are the peak values found using the findpeaks() function (I make use of both descending and MinProminance). This means I have their x and y -coordinates in decending order. I then only take the first 6 x and y elements and save them to a .mat file to compare the other words (Other words' .mat files to). I horizontally concatenate them and save them as a .mat file. I do this for 5 different words and then compare their .mat files via the mean square error function (immse). The word with the lowest error then corrisponds to a value k, i.e Word 1 word 2 etc. The problem is however, that it doesn't produce the right result. So I say "Five" and the algorithm says I said "Two" as it more closely resembles the .mat file of the word "Two" (So the peaks are closer).
Does anyone have any hints on where I could be going wrong or what other step I might need to take to go from the graph above to detecting which word has been said. My code is quite a mess and I don't want to discourage help by posting it... It follows the excact method I described to you for figuring out which word has been said. But if You'd like to help and request I post it I will. Thanks in advance!
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Salman Ahmed
Salman Ahmed am 17 Nov. 2021
Hi Leon,
From my understanding, you wish to develop an algorithm for word classification. If you have a dataset of different spoken instances of each word, you could extract time-frequency features and train a neural network. Also, have a look at a similar example here. You could customize this code by replacing the words you wish to detect. Hope it helps.
Leon Ellis
Leon Ellis am 17 Nov. 2021
Thank you very much. Unfortunetely it's a bit too late and I wasn't able to get it to work. I also don't think we're suppost to create an algorithm to train for word identification (We're just suppost to work with the audio file characteristics for identification.) But thanks a lot for replying!

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