PCCNet: A Few-Shot Patch-Wise Contrastive Colorization Network

Xiaying Liu, Ping Yang,Alexandru C. Telea,Jiri Kosinka,Zizhao Wu

ADVANCES IN COMPUTER GRAPHICS, CGI 2023, PT II(2024)

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摘要
Few-shot colorization aims to learn a model to colorize images with little training data. Yet, existing models often fail to keep color consistency due to ignored patch correlations of the images. In this paper, we propose PCCNet, a novel Patch-wise Contrastive Colorization Network to learn color synthesis by measuring the similarities and variations of image patches in two different aspects: inter-image and intra-image. Specifically, for inter-image, we investigate a patch-wise contrastive learning mechanism with positive and negative samples constraint to distinguish color features between patches across images. For intra-image, we explore a new intra-image correlation loss function to measure the similarity distribution which reveals structural relations between patches within an image. Furthermore, we propose a novel color memory loss that improves the accuracy of the memory module to store and retrieve data. Experiments show that our method allows the correctly saturated color to spread naturally over objects and also achieves higher scores in quantitative comparisons with related methods.
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关键词
Colorization,Contrastive Learning,Memory Networks
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