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During first lesson of Practical Deep Learning for Coders course, Jeremy had mentioned how using simple computer vision model by being a bit creative we can build a state of the art model to classify audio with same image classification model. I was curious on how I can train an music classifier, as I have never worked on audio data before. | |
[You can find how I trained this music genre classification using fast.ai](https://kurianbenoy.com/ml-blog/fastai/fastbook/2022/05/01/AudioCNNDemo.html). | |
## Dataset | |
1. [The competition data](https://www.kaggle.com/competitions/kaggle-pog-series-s01e02/data) | |
2. [Image data generated from converting audio to melspectograms in form of images](https://www.kaggle.com/datasets/dienhoa/music-genre-spectrogram-pogchamps) | |
## Training | |
Fast.ai was used to train this classifier with a ResNet50 vision learner for 10 epochs. | |
epoch train_loss valid_loss error_rate time | |
0 2.869285 2.171426 0.616428 01:43 | |
epoch train_loss valid_loss error_rate time | |
0 2.312176 1.843815 0.558654 02:07 | |
1 2.102361 1.719162 0.539061 02:08 | |
2 1.867139 1.623988 0.527003 02:08 | |
3 1.710557 1.527913 0.507661 02:07 | |
4 1.629478 1.456836 0.479779 02:05 | |
5 1.519305 1.433036 0.474253 02:05 | |
6 1.457465 1.379757 0.464456 02:05 | |
7 1.396283 1.369344 0.457925 02:05 | |
8 1.359388 1.367973 0.453655 02:05 | |
9 1.364363 1.368887 0.456167 02:04 | |
## Examples | |
The example images provided in the demo are from the validation data from Kaggle competition data, which was not used during training. | |