Unbalanced Feature Transport for Exemplar-based Image Translation
About
Despite the great success of GANs in images translation with different conditioned inputs such as semantic segmentation and edge maps, generating high-fidelity realistic images with reference styles remains a grand challenge in conditional image-to-image translation. This paper presents a general image translation framework that incorporates optimal transport for feature alignment between conditional inputs and style exemplars in image translation. The introduction of optimal transport mitigates the constraint of many-to-one feature matching significantly while building up accurate semantic correspondences between conditional inputs and exemplars. We design a novel unbalanced optimal transport to address the transport between features with deviational distributions which exists widely between conditional inputs and exemplars. In addition, we design a semantic-activation normalization scheme that injects style features of exemplars into the image translation process successfully. Extensive experiments over multiple image translation tasks show that our method achieves superior image translation qualitatively and quantitatively as compared with the state-of-the-art.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Image-to-Image Translation | CelebA-HQ | FID13.15 | 28 | |
| Image-to-Image Translation | COCO Stuff | FID33.65 | 9 | |
| Image-to-Image Translation | DeepFashion (val) | FID13.08 | 9 | |
| Image-to-Image Translation | ADE20K (train val) | FID25.15 | 9 | |
| Exemplar-based image translation | ADE20K | FID25.15 | 9 | |
| Exemplar-based image translation | DeepFashion | FID13.08 | 9 | |
| Image Translation | ADE20K | VGG42 Score0.883 | 8 | |
| Exemplar-based image translation | ADE20K (test) | Color Consistency96.3 | 7 |