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D3: Deep Dual-Domain Based Fast Restoration of JPEG-Compressed Images

机译:D3:基于深度双域的JPEG压缩图像的快速恢复

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In this paper, we design a Deep Dual-Domain (D3) based fast restoration model to remove artifacts of JPEG compressed images. It leverages the large learning capacity of deep networks, as well as the problem-specific expertise that was hardly incorporated in the past design of deep architectures. For the latter, we take into consideration both the prior knowledge of the JPEG compression scheme, and the successful practice of the sparsity-based dual-domain approach. We further design the One-Step Sparse Inference (1-SI) module, as an efficient and lightweighted feed-forward approximation of sparse coding. Extensive experiments verify the superiority of the proposed D3 model over several state-of-the-art methods. Specifically, our best model is capable of outperforming the latest deep model for around 1 dB in PSNR, and is 30 times faster.
机译:在本文中,我们设计了一种基于深度双域(D3)的快速恢复模型,以去除JPEG压缩图像的伪影。它利用了深层网络的强大学习能力,以及过去的深层架构设计中几乎没有包含的针对特定问题的专业知识。对于后者,我们既考虑了JPEG压缩方案的先验知识,又考虑了基于稀疏性的双域方法的成功实践。我们进一步设计了单步稀疏推理(1-SI)模块,作为稀疏编码的高效轻量级前馈近似。大量实验证明了所提出的D3模型优于几种最新方法的优越性。具体来说,我们最好的模型能够以大约1 dB的PSNR胜过最新的深度模型,并且速度要快30倍。

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