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simple-voice-prediction-using-MFCC-and-CNN

how to use

very simple, just simply open it on google colab, or jupyter notebook. you can adjust the program to your needs, hope it helps

  • pip install pydub (needed to read voice)

here we train some sounds to predict, I have provided 3 files that will be prediscussed using 3 layers and 32.16.8 filter size 3x3 softmax activation using sparse_categorical_crossentropy so that we get 0.9630 accuracy and 0.1365 loss

7/7 [==============================] - 0s 9ms/step - loss: 0.1115 - accuracy: 0.9630 Epoch 29/30 7/7 [==============================] - 0s 8ms/step - loss: 0.1066 - accuracy: 0.9630 Epoch 30/30 7/7 [==============================] - 0s 9ms/step - loss: 0.1365 - accuracy: 0.9630

download

this is the result of training from 3 voices

save Model

then at the end of the program you can save the results of the voice training into a .h5 file that you will use in your program

classifier.save_weights('suara.h5') or use classifier.save('suara.h5') according to your needs