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Data-Driven Color Augmentation Techniques for Deep Skin Image Analysis

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arxiv 1703.03702 v1 pith:2BBEY6EJ submitted 2017-03-10 cs.CV

Data-Driven Color Augmentation Techniques for Deep Skin Image Analysis

classification cs.CV
keywords colorskinimageimagestechniquetrainingapplyaugmentation
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Dermoscopic skin images are often obtained with different imaging devices, under varying acquisition conditions. In this work, instead of attempting to perform intensity and color normalization, we propose to leverage computational color constancy techniques to build an artificial data augmentation technique suitable for this kind of images. Specifically, we apply the \emph{shades of gray} color constancy technique to color-normalize the entire training set of images, while retaining the estimated illuminants. We then draw one sample from the distribution of training set illuminants and apply it on the normalized image. We employ this technique for training two deep convolutional neural networks for the tasks of skin lesion segmentation and skin lesion classification, in the context of the ISIC 2017 challenge and without using any external dermatologic image set. Our results on the validation set are promising, and will be supplemented with extended results on the hidden test set when available.

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