We present "Cross-Camera Convolutional Color Constancy" (C5), a learning-based method, trained on images from multiple cameras, that accurately estimates a scene's illuminant color from raw images captured by a new camera previously unseen during training. C5 is a hypernetwork-like extension of the convolutional color constancy (CCC) approach: C5 learns to generate the weights of a CCC model that is then evaluated on the input image, with the CCC weights dynamically adapted to different input content. Unlike prior cross-camera color constancy models, which are usually designed to be agnostic to the spectral properties of test-set images from unobserved cameras, C5 approaches this problem through the lens of transductive inference: additional unlabeled images are provided as input to the model at test time, which allows the model to calibrate itself to the spectral properties of the test-set camera during inference. C5 achieves state-of-the-art accuracy for cross-camera color constancy on several datasets, is fast to evaluate (~7 and ~90 ms per image on a GPU or CPU, respectively), and requires little memory (~2 MB), and thus is a practical solution to the problem of calibration-free automatic white balance for mobile photography.
Cross-Camera Convolutional Color Constancy
Cross-Camera Convolutional Color Constancy (C5) uses a hypernetwork-like approach to estimate illuminant color from new, unseen cameras, achieving state-of-the-art accuracy with fast evaluation and low memory usage.
- Year
- 2020
- Venue
- arXiv 2020
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- 5
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2011.11890ARXIV-DEFAULT
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