Deep Multi-Scale Residual Learning-based Blocking Artifacts Reduction for Compressed Images

Min-Hui Lin, C. Yeh, Chu-Han Lin, Chih-Hsiang Huang, Li-Wei Kang
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引用次数: 7

Abstract

Blocking artifact, characterized by visually noticeable changes in pixel values along block boundaries, is a general problem in block-based image/video compression systems. Various post-processing techniques have been proposed to reduce blocking artifacts, but most of them usually introduce excessive blurring or ringing effects. This paper presents a deep learning-based compression artifacts reduction (or deblocking) framework relying on multi-scale residual learning. Recent popular approaches usually train deep models using a per-pixel loss function with explicit image priors for directly producing deblocked images. Instead, we formulate the problem as learning the residuals (or the artifacts) between original and the corresponding compressed images. In our deep model, each input image is down-scaled first with blocking artifacts naturally reduced. Then, the learned SR (super-resolution) convolutional neural network (CNN) will be used to up-sample the down-scaled version. Finally, the up-scaled version (with less artifacts) and the original input are fed into the learned artifact prediction CNN to obtain the estimated blocking artifacts. As a result, the blocking artifacts can be successfully removed by subtracting the predicted artifacts from the input image while preserving most original visual details.
基于深度多尺度残差学习的压缩图像块伪影减少
块伪影是基于块的图像/视频压缩系统中的一个普遍问题,其特征是沿块边界的像素值在视觉上明显变化。各种后处理技术已经提出,以减少阻塞伪影,但大多数通常引入过多的模糊或振铃效果。本文提出了一种基于多尺度残差学习的基于深度学习的压缩伪影减少(或去块)框架。最近流行的方法通常使用带有显式图像先验的逐像素损失函数来训练深度模型,以直接生成去块图像。相反,我们将问题表述为学习原始图像和相应压缩图像之间的残差(或伪影)。在我们的深度模型中,每个输入图像首先被缩小,块伪影自然减少。然后,使用学习到的超分辨率卷积神经网络(CNN)对缩小版本进行上采样。最后,将放大版本(较少的伪影)和原始输入输入到学习到的伪影预测CNN中,得到估计的块伪影。因此,通过从输入图像中减去预测的伪影,同时保留大多数原始视觉细节,可以成功地去除阻塞伪影。
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