A joint deep-network-based image restoration algorithm for multi-degradations

Xu Sun, Xiaoguang Li, L. Zhuo, K. Lam, Jiafeng Li
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引用次数: 2

Abstract

In the procedures of image acquisition, compression, and transmission, captured images usually suffer from various degradations, such as low-resolution and compression distortion. Although there have been a lot of research done on image restoration, they usually aim to deal with a single degraded factor, ignoring the correlation of different degradations. To establish a restoration framework for multiple degradations, a joint deep-network-based image restoration algorithm is proposed in this paper. The proposed convolutional neural network is composed of two stages. Firstly, a de-blocking subnet is constructed, using two cascaded neural network. Then, super-resolution is carried out by a 20-layer very deep network with skipping links. Cascading these two stages forms a novel deep network. Experimental results on the Set5, Setl4 and BSD100 benchmarks demonstrate that the proposed method can achieve better results, in terms of both the subjective and objective performances.
基于深度网络的多重退化图像恢复联合算法
在图像的采集、压缩和传输过程中,捕获的图像通常会出现各种各样的退化,如低分辨率和压缩失真。虽然对图像恢复的研究很多,但通常都是针对单一的退化因素进行处理,忽略了不同退化因素之间的相关性。为了建立多重退化的恢复框架,本文提出了一种基于深度联合网络的图像恢复算法。所提出的卷积神经网络由两个阶段组成。首先,利用二级级联神经网络构造去阻塞子网;然后,通过一个20层跳跃式链路的极深网络实现超分辨率。级联这两个阶段形成了一个新的深度网络。在Set5、set14和BSD100基准测试上的实验结果表明,该方法在主观和客观性能方面都取得了较好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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