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Papers/Image Fine-grained Inpainting

Image Fine-grained Inpainting

Zheng Hui, Jie Li, Xiumei Wang, Xinbo Gao

2020-02-07Image InpaintingFacial InpaintingFine-Grained Image Inpainting
PaperPDFCodeCodeCode(official)

Abstract

Image inpainting techniques have shown promising improvement with the assistance of generative adversarial networks (GANs) recently. However, most of them often suffered from completed results with unreasonable structure or blurriness. To mitigate this problem, in this paper, we present a one-stage model that utilizes dense combinations of dilated convolutions to obtain larger and more effective receptive fields. Benefited from the property of this network, we can more easily recover large regions in an incomplete image. To better train this efficient generator, except for frequently-used VGG feature matching loss, we design a novel self-guided regression loss for concentrating on uncertain areas and enhancing the semantic details. Besides, we devise a geometrical alignment constraint item to compensate for the pixel-based distance between prediction features and ground-truth ones. We also employ a discriminator with local and global branches to ensure local-global contents consistency. To further improve the quality of generated images, discriminator feature matching on the local branch is introduced, which dynamically minimizes the similarity of intermediate features between synthetic and ground-truth patches. Extensive experiments on several public datasets demonstrate that our approach outperforms current state-of-the-art methods. Code is available at https://github.com/Zheng222/DMFN.

Results

TaskDatasetMetricValueModel
Facial Recognition and ModellingFFHQ SSIM0.8985DMFN
Facial Recognition and ModellingFFHQLPIPS0.0457DMFN
Facial Recognition and ModellingFFHQPSNR26.49DMFN
Image GenerationFFHQ SSIM0.8985DMFN
Image GenerationFFHQLPIPS0.0457DMFN
Image GenerationFFHQPSNR26.49DMFN
Image InpaintingFFHQ SSIM0.8985DMFN
Image InpaintingFFHQLPIPS0.0457DMFN
Image InpaintingFFHQPSNR26.49DMFN
Face ReconstructionFFHQ SSIM0.8985DMFN
Face ReconstructionFFHQLPIPS0.0457DMFN
Face ReconstructionFFHQPSNR26.49DMFN
3DFFHQ SSIM0.8985DMFN
3DFFHQLPIPS0.0457DMFN
3DFFHQPSNR26.49DMFN
3D Face ModellingFFHQ SSIM0.8985DMFN
3D Face ModellingFFHQLPIPS0.0457DMFN
3D Face ModellingFFHQPSNR26.49DMFN
3D Face ReconstructionFFHQ SSIM0.8985DMFN
3D Face ReconstructionFFHQLPIPS0.0457DMFN
3D Face ReconstructionFFHQPSNR26.49DMFN

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