A Deep Pyramid Attention Network for Single Image Super-resolution

Garas Gendy, Hazem Mohammed, Nabil Sabor, Guanghui He
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引用次数: 2

Abstract

The pyramid attention (PA) network is a new structure developed for digital image processing. This network was designed to extract long-range features at different locations and scales. Recently, PA architecture has been introduced in single image super-Resolution (SISR) to improve the model's ability to benefit from data's self-similarity. However, the effects of location and number of PA on extracting the self-similarity are not explored. In this paper, a Deep Pyramid Attention Network (DPANet) is proposed for SISR based on exploring the PA block. This is performed by studying the effect of varying the number of PA blocks and their locations on the model performance. Moreover, the effect of the residual scale on the PA's performance is studied. Evaluated based on five benchmark datasets, we concluded that using five PA blocks without down-scale residual interchanging with Resblocks in the network achieves significantly better results compared to the state-of-the-art methods. In addition, our model achieves superior visual quality and accuracy.
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单幅图像超分辨率的深度金字塔注意网络
金字塔注意网络是为数字图像处理而发展起来的一种新型网络结构。该网络旨在提取不同位置和尺度的远程特征。近年来,PA架构被引入到单幅图像超分辨率(SISR)中,以提高模型从数据的自相似性中获益的能力。然而,研究人员并没有探讨PA的位置和数目对提取自相似度的影响。本文提出了一种基于PA块探索的深度金字塔注意力网络(Deep Pyramid Attention Network, DPANet)。这是通过研究改变PA块的数量及其位置对模型性能的影响来实现的。此外,还研究了残余水垢对聚丙烯酸酯性能的影响。基于5个基准数据集的评估,我们得出结论,与最先进的方法相比,使用5个PA块而不与网络中的Resblocks进行小规模剩余交换,可以获得明显更好的结果。此外,我们的模型实现了卓越的视觉质量和准确性。
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