ofxDarknet - darknet neural network addon for openFrameworks

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ofxDarknet is a openFrameworks wrapper for darknet. In order to classify an image with more classes, this is the spot. This classifies an image according to the 1000-class ImageNet Challenge.

https://github.com/mrzl/ofxDarknet

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