Classification options when testing a CNN
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Hello!
I've been doing a lot of work with CNNs lately and I'm moving beyond constructing them to actually using them. I've been doing a lot of reading outside Matlab to try to understand how to use CNNs effectively and I found a pretty interesting article on how to preprocess data before classification (https://machinelearningmastery.com/best-practices-for-preparing-and-augmenting-image-data-for-convolutional-neural-networks/). Now, most of these methods are available as options in the imageInputLayer function, but I found the test processing in the above article pretty interesting.
It seems like it isn't uncommon to take multiple crops and rotations of a single image during testing, using each subimage classification to update an overall classification, then return the final value as the actual result.
Is there a way to do this in Matlab?
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