WB_sRGB
Image correction tool
Corrects images with improper white balance by learning from the nearest neighbors of properly white-balanced images
White balance camera-rendered sRGB images (CVPR 2019) [Matlab & Python]
345 stars
12 watching
62 forks
Language: MATLAB
last commit: almost 2 years ago
Linked from 1 awesome list
colorcolor-constancycolor-correctioncolor-enhancementcolor-histogramcolor-processingcomputational-photographycomputer-visioncvpr2019datasetdatasetsimage-enhancementimage-processingwb-srgbwhite-balancewhitebalance
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