Publication Type
Journal Article
Version
publishedVersion
Publication Date
4-2023
Abstract
Anime is an abstract art form that is substantially different from the human portrait, leading to a challenging misaligned image translation problem that is beyond the capability of existing methods. This can be boiled down to a highly ambiguous unconstrained translation between two domains. To this end, we design a new anime translation framework by deriving the prior knowledge of a pre-Trained StyleGAN model. We introduce disentangled encoders to separately embed structure and appearance information into the same latent code, governed by four tailored losses. Moreover, we develop a FaceBank aggregation method that leverages the generated data of the StyleGAN, anchoring the prediction to produce in-domain animes. To empower our model and promote the research of anime translation, we propose the first anime portrait parsing dataset, Danbooru-Parsing, containing 4,921 densely labeled images across 17 classes. This dataset connects the face semantics with appearances, enabling our new constrained translation setting. We further show the editability of our results, and extend our method to manga images, by generating the first manga parsing pseudo data. Extensive experiments demonstrate the values of our new dataset and method, resulting in the first feasible solution on anime translation.
Keywords
Abstract arts, Aggregation methods, Anchorings, Feasible solution, Image editing, Image translation, Image-to-image translation, Labeled images, Prior-knowledge, Two domains
Discipline
Databases and Information Systems
Research Areas
Information Systems and Management
Publication
ACM Transactions on Graphics
Volume
42
Issue
3
ISSN
0730-0301
Identifier
10.1145/3585002
Publisher
Association for Computing Machinery (ACM)
Citation
LI, Zhansheng; XU, Yangyang; ZHAO, Nanxuan; ZHOU, Yang; LIU, Yongtuo; LIN, Dahua; and HE, Shengfeng.
Parsing-Conditioned Anime Translation: A New Dataset and Method. (2023). ACM Transactions on Graphics. 42, (3),.
Available at: https://ink.library.smu.edu.sg/sis_research/8434
Copyright Owner and License
Authors
Creative Commons License
This work is licensed under a Creative Commons Attribution-NonCommercial-No Derivative Works 4.0 International License.
Additional URL
https://doi.org/10.1145/3585002