ChromaGAN: Adversarial Picture Colorization with Semantic Class Distribution
About
The colorization of grayscale images is an ill-posed problem, with multiple correct solutions. In this paper, we propose an adversarial learning colorization approach coupled with semantic information. A generative network is used to infer the chromaticity of a given grayscale image conditioned to semantic clues. This network is framed in an adversarial model that learns to colorize by incorporating perceptual and semantic understanding of color and class distributions. The model is trained via a fully self-supervised strategy. Qualitative and quantitative results show the capacity of the proposed method to colorize images in a realistic way achieving state-of-the-art results.
Patricia Vitoria, Lara Raad, Coloma Ballester• 2019
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Image Colorization | Extended COCO-Stuff (test) | PSNR22.08 | 20 | |
| Image Colorization | Multi-instance (test) | PSNR22.41 | 20 | |
| Colorization | ImageNet (test) | FID7.66 | 11 | |
| Image Colorization | ImageNet and Places ILSVRC2012 (val) | Naturalness Score76.9 | 8 | |
| Visual Realism | Extended COCO-Stuff (test) | Selection Rate7.16 | 8 | |
| Visual Realism | Multi-instance (test) | Selection Rate6.32 | 8 | |
| Colorization | ILSVRC challenge set 2012 | PSNR (dB)25.57 | 7 |
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