Learning to Color from Language
About
Automatic colorization is the process of adding color to greyscale images. We condition this process on language, allowing end users to manipulate a colorized image by feeding in different captions. We present two different architectures for language-conditioned colorization, both of which produce more accurate and plausible colorizations than a language-agnostic version. Through this language-based framework, we can dramatically alter colorizations by manipulating descriptive color words in captions.
Varun Manjunatha, Mohit Iyyer, Jordan Boyd-Graber, Larry Davis• 2018
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Image Colorization | Extended COCO-Stuff (test) | PSNR21.06 | 20 | |
| Image Colorization | Multi-instance (test) | PSNR20.54 | 20 | |
| Image-Description Correspondence | Extended COCO-Stuff (test) | Selection Rate3.28 | 7 | |
| Image-Description Correspondence | Multi-instance (test) | Selection Rate0.0492 | 7 |
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