This is probably very silly question, but I couldn't find details anywhere.
So I have an audio recording (wav file) that is 3 seconds long. That is my sample and it needs to be classified as [class_A] or [class_B].
By following some tutroial on MFCC, I divided the sample into frames (291 frames to be exact) and I've gotten MFCCs from each frame.
Now I have 291 feature vectors, the length of each vector is 13.
My question is; how exactly do you use those vectors with classifier (k-NN for example)? I have 291 vectors that represent 1 sample. I know how to work with 1 vector for 1 sample, but I don't know what to do if I have 291 of them. I couldn't really find explanation anywhere.