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Multi-domain residual encoder–decoder networks for generalized compression artifact reduction

机译:多域残差编码器-解码器网络,用于减少广义压缩伪影

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? 2022 Elsevier Inc.A fundamental requirement for designing compression artifact reduction techniques is to restore the artifact free image from its compressed version regardless of the compression level. Most existing algorithms require the prior knowledge of JPEG encoding parameters to operate effectively. Although there are works that attempt to train universal models to deal with different compression levels, some JPEG quality factors (QF) are still missing. To overcome these potential limitations, in this paper, we present a generalized JPEG-compression artifact reduction framework that relies on improved QF estimator and rectified networks to take into account all possible QF values. Our method, called a generalized compression artifact reducer (G-CAR), first predicts QF by analyzing luminance patches with high activity. Then, based on the estimated QF, images are adaptively restored by the cascaded residual encoder–decoder networks learned in multiple domains. Results tested on six benchmark datasets demonstrate the effectiveness of our proposed model.
机译:?2022 Elsevier Inc.设计压缩伪影减少技术的一个基本要求是,无论压缩级别如何,都要从其压缩版本恢复无伪影的图像。大多数现有算法需要先验 JPEG 编码参数才能有效运行。尽管有一些工作试图训练通用模型来处理不同的压缩级别,但仍然缺少一些 JPEG 质量因子 (QF)。为了克服这些潜在的局限性,在本文中,我们提出了一个广义的JPEG压缩伪影减少框架,该框架依赖于改进的QF估计器和修正网络来考虑所有可能的QF值。我们的方法称为广义压缩伪影还原器(G-CAR),首先通过分析具有高活性的亮度斑块来预测QF。然后,基于估计的QF,通过在多个域中学习的级联残差编码器-解码器网络自适应恢复图像。在六个基准数据集上测试的结果证明了我们提出的模型的有效性。

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