Abstract

Image inpainting networks can produce visually reasonable results in the damaged regions. However, existing inpainting networks may fail to reconstruct the proper structures or tend to generate the results with color discrepancy. To solve this issue, this paper proposes an image inpainting approach using the proposed two-stage loss function. The loss function consists of different Gaussian kernels, which are utilized in different stages of network. The use of our two-stage loss function in coarse network helps to focus on the image structure, while the use of it in refinement network is helpful to restore the image details. Moreover, we proposed a global and local PatchGANs (GAN means generative adversarial network), named GL-PatchGANs, in which the global and local markovian discriminators were used to control the final results. This is beneficial to focus on the regions of interest (ROI) on different scales and tends to produce more realistic structural and textural details. We trained our network on three popular datasets on image inpainting separately, both Peak Signal to Noise ratio (PSNR) and Structural Similarity (SSIM) between our results, and ground truths on test images show that our network can achieve better performance compared with the recent works in most cases. Besides, the visual results on three datasets also show that our network can produce visual plausible results compared with the recent works.

Highlights

  • Image inpainting is to restore the complete visual effects by generating the alternate structures and textures in the missing areas of images

  • Signal to Noise ratio (PSNR) and Structural Similarity (SSIM) between our results, and ground truths on test images show that our network can achieve better performance compared with the recent works in most cases

  • Inpainting for Irregular Holes Using Partial Convolutions (ECCV2018), EC [17] represents the results of EdgeConnect (ICCV2019), GC [16] represents the results of Free-Form Image Inpainting with Gated

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Summary

Introduction

Image inpainting is to restore the complete visual effects by generating the alternate structures and textures in the missing areas of images. It is an important part of many image editing operations, such as image target removal, image restoration, and image denoising [1,2,3]. Image inpainting technology has been proposed for several decades. The first one is proposed to deal with the small object removal, such as noise, rain, and scratch, which is realized by expanding the information in the existing region to the damaged region, so it may fail to restore the image with large damaged regions

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