Adding a CNN-based classifier for the task of entries/other classification#5
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iamgroot42 wants to merge 2 commits intoFreeUKGen:masterfrom
Open
Adding a CNN-based classifier for the task of entries/other classification#5iamgroot42 wants to merge 2 commits intoFreeUKGen:masterfrom
iamgroot42 wants to merge 2 commits intoFreeUKGen:masterfrom
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benlaurie
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Mar 2, 2018
| model.add(Activation('relu')) | ||
| model.add(Conv2D(32, (3, 3))) | ||
| model.add(BatchNormalization()) | ||
| model.add(Activation('relu')) |
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Why is indentation change not causing Python to vomit?
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Oh well. Not sure how I missed it :(
Fixed it now
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Addresses issue #2
I've implemented a small, basic CNN for this task of classification. Images have been resized to a convenient shape, with their colors stripped off. I've added measures to take care of the small amount of data as well as the variations in it; using batch normalization, low learning rates.
In addition to this, I've also used a class-balanced error while training (to account for the class imbalance).
Using the classifier at my end, I achieved a test accuracy of 86.55% and no over-fitting.