论文标题

剩余通道注意生成的对抗网络,用于图像超分辨率和降噪

Residual Channel Attention Generative Adversarial Network for Image Super-Resolution and Noise Reduction

论文作者

Cai, Jie, Meng, Zibo, Ho, Chiu Man

论文摘要

图像超分辨率是旨在重建相应低分辨率图像的高分辨率图像的重要计算机视觉技术之一。最近,已经证明了基于深度学习的方法用于超级分辨率。但是,随着深层网络的进度,它们变得越来越难以训练,并且更难恢复更好的纹理细节,尤其是在现实世界中。在本文中,我们提出了一个残留的通道引起的对抗网络(RCA-GAN)来解决这些问题。具体而言,提出了一个新型的残留通道注意块形成RCA-GAN,该块由一组具有快捷连接的残留块组成,以及一种通道注意机制,以模拟不同通道之间特征表示的相互依赖性和相互作用。此外,采用生成对抗网络(GAN)进一步产生现实且高度详细的结果。从这些改进中受益,拟议的RCA-GAN比基线模型更具详细和自然的纹理,从而始终如一地产生更好的视觉质量。与现实世界图像超分辨率的最新方法相比,与最先进的方法相比,实现了可比性或更好的性能。

Image super-resolution is one of the important computer vision techniques aiming to reconstruct high-resolution images from corresponding low-resolution ones. Most recently, deep learning-based approaches have been demonstrated for image super-resolution. However, as the deep networks go deeper, they become more difficult to train and more difficult to restore the finer texture details, especially under real-world settings. In this paper, we propose a Residual Channel Attention-Generative Adversarial Network(RCA-GAN) to solve these problems. Specifically, a novel residual channel attention block is proposed to form RCA-GAN, which consists of a set of residual blocks with shortcut connections, and a channel attention mechanism to model the interdependence and interaction of the feature representations among different channels. Besides, a generative adversarial network (GAN) is employed to further produce realistic and highly detailed results. Benefiting from these improvements, the proposed RCA-GAN yields consistently better visual quality with more detailed and natural textures than baseline models; and achieves comparable or better performance compared with the state-of-the-art methods for real-world image super-resolution.

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