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Guided Image-to-Image Translation with Bi-Directional Feature Transformation
Badour AlBahar Jia-Bin Huang

Abstract
We address the problem of guided image-to-image translation where we translate an input image into another while respecting the constraints provided by an external, user-provided guidance image. Various conditioning methods for leveraging the given guidance image have been explored, including input concatenation , feature concatenation, and conditional affine transformation of feature activations. All these conditioning mechanisms, however, are uni-directional, i.e., no information flow from the input image back to the guidance. To better utilize the constraints of the guidance image, we present a bi-directional feature transformation (bFT) scheme. We show that our bFT scheme outperforms other conditioning schemes and has comparable results to state-of-the-art methods on different tasks.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| image-reconstruction-on-edge-to-clothes | bFT | FID: 58.4 LPIPS: 0.1 |
| image-reconstruction-on-edge-to-handbags | bFT | FID: 74.9 LPIPS: 0.2 |
| image-reconstruction-on-edge-to-shoes | bFT | FID: 121.2 LPIPS: 0.1 |
| pose-transfer-on-deep-fashion | bFT | FID: 12.266 IS: 3.22 SSIM: 0.767 |
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