“Anime Colorization Using Segment Matching With Candidate Colors” by Takano, Maejima, Yamaguchi and Morishima – ACM SIGGRAPH HISTORY ARCHIVES

“Anime Colorization Using Segment Matching With Candidate Colors” by Takano, Maejima, Yamaguchi and Morishima

  • 2025 Posters_Ji_Confidence Estimation of Few-Shot Patch-Based Learning for Anime-Style Colorization

Conference:


Type(s):


Title:

    Anime Colorization Using Segment Matching With Candidate Colors

Session/Category Title:

    Images, Video & Computer Vision

Presenter(s)/Author(s):



Abstract:


    A novel method for automatic colorization of anime line drawings achieves improved accuracy over state-of-the-art segment matching-based approaches by leveraging semantic segmentation and color shuffling processes without relying on flow estimation, effectively addressing challenges posed by large motion gaps and small regions.

References:


    [1] Yuekun Dai, Shangchen Zhou, Qinyue Li, Chongyi Li, and Chen Change Loy. 2024. Learning Inclusion Matching for Animation Paint Bucket Colorization. In 2024 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR). 25544–25553.
    [2] Akinobu Maejima, Seitaro Shinagawa, Hiroyuki Kubo, Takuya Funatomi, Tatsuo Yotsukura, Satoshi Nakamura, and Yasuhiro Mukaigawa. 2024. Continual few-shot patch-based learning for anime-style colorization. Comp. Visual Media 10, 4 (2024), 705–723.


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