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I am investigating the performance measure using the confusion matrix for a MFCC trained ANN and LPC trained ANN. I wrote a MATLAB code to generate the MFCC coefficients. I have a rectangular matrix of the order "length of one frame x number of MFCC per frame". For a 12 sec speech sample I have MFCC matrix of the order 100 x 10.MY question is I am unaware as how to decide the number of input layer neurons and how to train the network? As how am I going to present the data to the ANN? Please help me.

Thank you!

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It couldn't hurt to grab a recent paper of someone doing related work and see how they've done it. Probably not the answer you wanted, but then you don't have to reinvent the wheel. –  jonsca Jun 4 '11 at 12:38
Well, thanks for replying. I went through papers. But he doesn't give a clear description of the simulating side. I make use of nntool box in matlab. I have MFCC generated for three speakers. i have an 10 input, 20 hidden,3 output Feedforward Back propogation MLP. How am I to form the input vectors for training the network? 10 inputs represents the 10 cepstral coefficients, but there are 100 frames for each MFCC matrix. . –  G.Dinesh Nathan Jun 4 '11 at 14:27
Have you found any answer for the input formating - normalizeing ? –  user1073341 Nov 30 '11 at 12:42
@Szabolcs Yes, I did. –  G.Dinesh Nathan Dec 13 '11 at 13:31

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