Single image super-resolution is an effective way to enhance the spatial resolution of remote sensing image, which is crucial for many applications such as target detection and image classification. However, existing methods based on the neural network usually have small receptive fields and ignore the image detail. We propose a novel method named deep memory connected network (DMCN) based on a convolutional neural network to reconstruct high-quality super-resolution images. We build local and global memory connections to combine image detail with environmental information. To further reduce parameters and ease time-consuming, we propose downsampling units, shrinking the spatial size of feature maps. We test DMCN on three remote sensing datasets with different spatial resolution. Experimental results indicate that our method yields promising improvements in both accuracy and visual performance over the current state-of-the-art.
翻译:单一图像超分辨率是提高遥感图像空间分辨率的有效方法,这对目标探测和图像分类等许多应用至关重要。然而,基于神经网络的现有方法通常有小的可接收字段,忽视图像细节。我们提议了一种名为深记忆连接网络(DMCN)的新方法,其基础是一个革命性神经网络,以重建高质量的超分辨率图像。我们建立地方和全球的记忆连接,将图像细节和环境信息结合起来。为了进一步减少参数并减轻时间消耗,我们提议缩小取样单位,缩小地貌图的空间大小。我们用三个空间分辨率不同的遥感数据集测试DMCN。实验结果表明,我们的方法在准确性和视觉性能方面都比目前最先进的技术有希望。