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Remote sensing image super-resolution using deep-shallow cascaded convolutional neural networks

机译:深浅级联卷积神经网络遥感图像超分辨率

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Purpose This paper aims to present a novel approach of image super-resolution based on deep-shallow cascaded convolutional neural networks for reconstructing a clear and high-resolution (HR) remote sensing image from a low-resolution (LR) input. Design/methodology/approach The proposed approach directly learns the residuals and mapping between simulated LR and their corresponding HR remote sensing images based on deep and shallow end-to-end convolutional networks instead of assuming any specific restored models. Extra max-pooling and up-sampling are used to achieve a multiscale space by concatenating low- and high-level feature maps, and an HR image is generated by combining LR input and the residual image. This model ensures a strong response to spatially local input patterns by using a large filter and cascaded small filters. The authors adopt a strategy based on epochs to update the learning rate for boosting convergence speed. Findings The proposed deep network is trained to reconstruct high-quality images for low-quality inputs through a simulated dataset, which is generated with Set5, Set14, Berkeley Segmentation Data set and remote sensing images. Experimental results demonstrate that this model considerably enhances remote sensing images in terms of spatial detail and spectral fidelity and outperforms state-of-the-art SR methods in terms of peak signal-to-noise ratio, structural similarity and visual assessment. Originality/value The proposed method can reconstruct an HR remote sensing image from an LR input and significantly improve the quality of remote sensing images in terms of spatial detail and fidelity.
机译:目的本文旨在基于深浅级联卷积神经网络的图像超分辨率的新方法,用于重建从低分辨率(LR)输入的清晰高分辨率(HR)遥感图像。设计/方法/方法所提出的方法基于深层和浅端到端卷积网络直接学习模拟LR与其对应的HR遥感图像之间的残差和映射,而不是假设任何特定的恢复模型。额外的最大池和上采样用于通过连接低电平和高电平特征映射来实现多尺度空间,并且通过组合LR输入和残差图像来生成HR图像。该模型通过使用大型过滤器和级联的小滤波器确保对空间局部输入模式的强烈响应。作者采用了基于时期的战略,以更新促进收敛速度的学习率。发现建议的深网络训练以通过模拟数据集进行重建以进行低质量输入的高质量图像,该数据集是用Set5,Set14,Berkeley分段数据集和遥感图像生成的。实验结果表明,在峰值信噪比,结构相似性和视觉评估方面,该模型在空间细节和光谱保真度方面显着增强了遥感图像和优于最先进的SR方法。原创性/值所提出的方法可以从LR输入重建HR遥感图像,并在空间细节和保真度方面显着提高遥感图像的质量。

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