Image super-resolution (SR) methods can generate remote sensing images with high spatial resolution without increasing the cost, thereby providing a feasible way to acquire high-resolution remote sensing images, which are difficult to obtain due to the high cost of acquisition equipment and complex weather. Clearly, image super-resolution is a severe ill-posed problem. Fortunately, with the development of deep learning, the powerful fitting ability of deep neural networks has solved this problem to some extent. In this paper, we propose a network based on the generative adversarial network (GAN) to generate high resolution remote sensing images, named the multi-attention generative adversarial network (MA-GAN). We first designed a GAN-based framework for the image SR task. The core to accomplishing the SR task is the image generator with post-upsampling that we designed. The main body of the generator contains two blocks; one is the pyramidal convolution in the residual-dense block (PCRDB), and the other is the attention-based upsample (AUP) block. The attentioned pyramidal convolution (AttPConv) in the PCRDB block is a module that combines multi-scale convolution and channel attention to automatically learn and adjust the scaling of the residuals for better results. The AUP block is a module that combines pixel attention (PA) to perform arbitrary multiples of upsampling. These two blocks work together to help generate better quality images. For the loss function, we design a loss function based on pixel loss and introduce both adversarial loss and feature loss to guide the generator learning. We have compared our method with several state-of-the-art methods on a remote sensing scene image dataset, and the experimental results consistently demonstrate the effectiveness of the proposed MA-GAN.
翻译:图像超分辨率( SR) 方法可以在不增加成本的情况下生成高空间分辨率的遥感图像, 从而为获取高清晰度的遥感图像提供了可行的方法, 由于购置设备成本高和天气复杂, 很难获得高清晰度的遥感图像。 显然, 图像超分辨率是一个严重的问题。 幸运的是, 随着深层学习的发展, 深神经网络的强大适当能力在某种程度上解决了这个问题。 在本文件中, 我们提议建立一个基于基因对称网络( GAN) 的网络, 以生成高清晰度的遥感图像, 命名为多注意的基因对抗网络( MA- GAN) 。 我们首先为图像SR任务设计了一个基于 GAN 的功能。 完成图像超分辨率超清晰度分辨率是一个严重的问题。 随着深深层学习, 深层神经网络网络网络的金字塔, 以及其它基于关注的上层的上层图案( At PCDRDB ), 和多层的磁带的损耗损特性功能 将一个更好的图像模型组合起来 。