Learning Representations for Automatic Colorization
About
We develop a fully automatic image colorization system. Our approach leverages recent advances in deep networks, exploiting both low-level and semantic representations. As many scene elements naturally appear according to multimodal color distributions, we train our model to predict per-pixel color histograms. This intermediate output can be used to automatically generate a color image, or further manipulated prior to image formation. On both fully and partially automatic colorization tasks, we outperform existing methods. We also explore colorization as a vehicle for self-supervised visual representation learning.
Gustav Larsson, Michael Maire, Gregory Shakhnarovich• 2016
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Full-image colorization | COCO Stuff (val) | LPIPS0.179 | 18 | |
| Image Colorization | ImageNet 500-image human evaluation (test) | AMT Fooling Rate30.9 | 11 | |
| Colorization | ImageNet 10k images (val) | AuC (non-rebalanced)91.7 | 9 | |
| Image Colorization | ILSVRC 1000 2012 (val) | PSNR24.93 | 9 | |
| Full-image colorization | ImageNet (ctest10k) | LPIPS0.188 | 9 | |
| Full-image colorization | Places205 (val) | LPIPS0.161 | 9 | |
| Image Colorization | ImageNet and Places ILSVRC2012 (val) | Naturalness Score53.6 | 8 | |
| Colorization | ILSVRC challenge set 2012 | PSNR (dB)24.93 | 7 |
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