Abstract
Remote-sensing images constitute an important means of obtaining geographic information. Image super-resolution reconstruction techniques are effective methods of improving the spatial resolution of remote-sensing images. Super-resolution reconstruction networks mainly improve the model performance by increasing the network depth. However, blindly increasing the network depth can easily lead to gradient disappearance or gradient explosion, increasing the difficulty of training. This report proposes a new pyramidal multi-scale residual network (PMSRN) that uses hierarchical residual-like connections and dilation convolution to form a multi-scale dilation residual block (MSDRB). The MSDRB enhances the ability to detect context information and fuses hierarchical features through the hierarchical feature fusion structure. Finally, a complementary block of global and local features is added to the reconstruction structure to alleviate the problem that useful original information is ignored. The experimental results showed that, compared with a basic multi-scale residual network, the PMSRN increased the peak signal-to-noise ratio by up to 0.44 dB and the structural similarity to 0.9776.
Highlights
IntroductionImage resolution indicates the amount of information contained in an image [1]
Image resolution indicates the amount of information contained in an image [1].A high-resolution (HR) image has a higher pixel density, higher definition characteristics, and more detailed texture information than a low-resolution (LR) image
Whereas image resolution is the number of pixels in an image, spatial resolution indicates the minimum size of ground targets whose details can be distinguished and is used in the field of remote sensing
Summary
Image resolution indicates the amount of information contained in an image [1]. A high-resolution (HR) image has a higher pixel density, higher definition characteristics, and more detailed texture information than a low-resolution (LR) image. Whereas image resolution is the number of pixels in an image, spatial resolution indicates the minimum size of ground targets whose details can be distinguished and is used in the field of remote sensing. In remote-sensing images, high spatial resolution enables the changes in surface details to be observed more clearly on a smaller spatial size [2]. Some remote-sensing satellites only provide low-spatial-resolution remote-sensing images that do not meet actual usage requirements.
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