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Large Scale Image Completion via Co-Modulated Generative Adversarial Networks
Shengyu Zhao Jonathan Cui Yilun Sheng Yue Dong Xiao Liang Eric I Chang Yan Xu

Abstract
Numerous task-specific variants of conditional generative adversarial networks have been developed for image completion. Yet, a serious limitation remains that all existing algorithms tend to fail when handling large-scale missing regions. To overcome this challenge, we propose a generic new approach that bridges the gap between image-conditional and recent modulated unconditional generative architectures via co-modulation of both conditional and stochastic style representations. Also, due to the lack of good quantitative metrics for image completion, we propose the new Paired/Unpaired Inception Discriminative Score (P-IDS/U-IDS), which robustly measures the perceptual fidelity of inpainted images compared to real images via linear separability in a feature space. Experiments demonstrate superior performance in terms of both quality and diversity over state-of-the-art methods in free-form image completion and easy generalization to image-to-image translation. Code is available at https://github.com/zsyzzsoft/co-mod-gan.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| image-inpainting-on-celeba-hq | CoModGAN | FID: 5.65 P-IDS: 11.23 U-IDS: 22.54 |
| image-inpainting-on-ffhq-512-x-512 | CoModGAN | FID: 3.7 P-IDS: 16.6% U-IDS: 29.4% |
| image-inpainting-on-places2-1 | CoModGAN | FID: 2.92 P-IDS: 19.64 U-IDS: 35.78 |
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