Mining Discriminative Components with Random Forests
A Matlab implementation of the Random Forest Discriminative Components algorithm described in [1] for automatically recognizing pictured dishes. The implementation achieves about a top-1 accuracy of 46% and a top-5 accuracy of 70% on the challenging food-101 dataset which contains 101000 images of 101 food categories. The dataset can be found here.
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