Abstract

The principle of image super-resolution reconstruction (SR) is to pass one or more low-resolution (LR) images through information processing technology to obtain the final high-resolution (HR) image. Convolutional neural networks (CNN) have achieved better results than traditional methods in the process of an image super-resolution reconstruction. However, if the number of neural network layers is increased blindly, it will cause a significant increase in the amount of calculation, increase the difficulty of training the network, and cause the loss of image details. Therefore, in this paper, we use a novel and effective image super-resolution reconstruction technique via fast global and local residual learning model (FGRLR). The principle is to directly train a low-resolution small image on a neural network without enlarging it. This will effectively reduce the amount of calculation. In addition, the stacked local residual block (LRB) structure is used for non-linear mapping, which can effectively overcome the problem of image degradation. After extracting features, use 1 × 1 convolution to perform dimensional compression, and expand the dimensions after non-linear mapping, which can reduce the calculation amount of the model. In the reconstruction layer, deconvolution is used to enlarge the image to the required size. This also reduces the number of parameters. We use skip connections to use low-resolution information for reconstructing high-resolution images. Experimental results show that the algorithm can effectively shorten the running time without affecting the quality of image restoration.

Highlights

  • In recent years, with the impact of the Internet boom and the rapid development of information technology, people’s requirements for signal and information processing have gradually increased, and image processing is an important part of information processing

  • A total of 291 images are used in the training set used in the algorithm of this paper including

  • We use Set5 [19], Set14 [20], BSD100 [21], and Urban100 [22] as the test set, containing 5, 14, 100, and 100 images, respectively. These images were processed by the model we used to reconstruct the final high-resolution image

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Summary

Introduction

With the impact of the Internet boom and the rapid development of information technology, people’s requirements for signal and information processing have gradually increased, and image processing is an important part of information processing. Image super-resolution (SR) technology is important in image processing. The principle is to pass one or more low-resolution (LR) images to the final high-resolution (HR) image through information processing technology. The traditional method is to enlarge the LR small image to the required size by interpolation, Appl. Sci. 2020, 10, 1856 and use the reconstruction algorithm to obtain an HR image. The super-resolution reconstructed image has clear details and contains plenty of information, so it can be widely used [1,2]. In the crime scene video, HR images provide more favorable evidence for the public security organs’

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