Reference-Based Multi-Stage Progressive Restoration for Multi-Degraded Images

Yi Zhang;Qixue Yang;Damon M. Chandler;Xuanqin Mou
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Abstract

Image restoration (IR) via deep learning has been vigorously studied in recent years. However, due to the ill-posed nature of the problem, it is challenging to recover the high-quality image details from a single distorted input especially when images are corrupted by multiple distortions. In this paper, we propose a multi-stage IR approach for progressive restoration of multi-degraded images via transferring similar edges/textures from the reference image. Our method, called a Reference-based Image Restoration Transformer (Ref-IRT), operates via three main stages. In the first stage, a cascaded U-Transformer network is employed to perform the preliminary recovery of the image. The proposed network consists of two U-Transformer architectures connected by feature fusion of the encoders and decoders, and the residual image is estimated by each U-Transformer in an easy-to-hard and coarse-to-fine fashion to gradually recover the high-quality image. The second and third stages perform texture transfer from a reference image to the preliminarily-recovered target image to further enhance the restoration performance. To this end, a quality-degradation-restoration method is proposed for more accurate content/texture matching between the reference and target images, and a texture transfer/reconstruction network is employed to map the transferred features to the high-quality image. Experimental results tested on three benchmark datasets demonstrate the effectiveness of our model as compared with other state-of-the-art multi-degraded IR methods. Our code and dataset are available at https://vinelab.jp/refmdir/ .
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基于参考的多级渐进式修复多降级图像。
近年来,通过深度学习进行图像复原(IR)的研究十分活跃。然而,由于该问题的不确定性,从单个失真输入中恢复高质量图像细节具有挑战性,尤其是当图像受到多重失真破坏时。在本文中,我们提出了一种多阶段红外方法,通过从参考图像中转移相似的边缘/纹理来逐步恢复多畸变图像。我们的方法称为基于参考的图像复原转换器(Ref-IRT),通过三个主要阶段进行操作。在第一阶段,采用级联 U 变换器网络对图像进行初步恢复。拟议的网络由两个 U 变换器架构组成,通过编码器和解码器的特征融合进行连接,每个 U 变换器以由易到难、由粗到细的方式估算残留图像,从而逐步恢复高质量图像。第二和第三阶段从参考图像到初步恢复的目标图像进行纹理转移,以进一步提高恢复性能。为此,我们提出了一种质量降级-修复方法,用于在参考图像和目标图像之间进行更精确的内容/纹理匹配,并采用纹理转移/重建网络将转移的特征映射到高质量图像上。在三个基准数据集上测试的实验结果表明,与其他最先进的多重降级红外方法相比,我们的模型非常有效。我们的代码和数据集可在 https://vinelab.jp/refmdir/ 上获取。
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