food-101-keras - Food Classification with Deep Learning in Keras / Tensorflow

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If you are reading this on GitHub, the demo looks like this. Please follow the link below to view the live demo on my blog. Convolutional Neural Networks (CNN), a technique within the broader Deep Learning field, have been a revolutionary force in Computer Vision applications, especially in the past half-decade or so. One main use-case is that of image classification, e.g. determining whether a picture is that of a dog or cat.

http://blog.stratospark.com/deep-learning-applied-food-classification-deep-learning-keras.html
https://github.com/stratospark/food-101-keras

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