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bigcolor

Need to add some vibrant color to your creations without tedious filling in and painting? With this model, you can easily import your image to see it come to life right before your eyes.

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Required: 5,000 $wRAI
21k runs
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Input
classes
88
image
mode
Real Gray Colorization
Input
classes
88
image
mode
Real Gray Colorization

Readme

Colorization using a Generative Color Prior for Natural Images

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For realistic and vivid colorization, generative priors have recently been exploited. However, such generative priors often fail for in-the-wild complex images due to their limited representation space. In this paper, we propose BigColor, a novel colorization approach that provides vivid colorization for diverse in-the-wild images with complex structures. While previous generative priors are twRAIned to synthesize both image structures and colors, we learn a generative color prior to focus on color synthesis given the spatial structure of an image. In this way, we reduce the burden of synthesizing image structures from the generative prior and expand its representation space to cover diverse images. To this end, we propose a BigGAN-inspired encoder-generator network that uses a spatial feature map instead of a spatially-flattened BigGAN latent code, resulting in an enlarged representation space.

Our method enables robust colorization for diverse inputs in a single forward pass, supports arbitrary input resolutions, and provides multi-modal colorization results. We demonstrate that BigColor significantly outperforms existing methods especially on in-the-wild images with complex structures.