Abstract
The images in high resolution contain more useful information than the images in low resolution. Thus, high-resolution digital images are preferred over low-resolution images. Image super-resolution is one of the principal techniques for generating high-resolution images. The major advantages of super-resolution methods are that they are economical, independent of the image capture devices, and can be statically used. In this paper, a single-image super-resolution network model based on convolutional neural networks is proposed by combining conventional autoencoder and residual neural network approaches. A convolutional neural network-based dictionary method is used to train low-resolution input images for high-resolution images. In addition, a linear refined unit thresholds the convolutional neural network output to provide a better low-resolution image dictionary. Autoencoders aid in the removal of noise from images and the enhancement of their quality. Secondly, the residual neural network model processes it further to create a high-resolution image. The experimental results demonstrate the outstanding performance of our proposed method compared to other traditional methods. The proposed method produces clearer and more detailed high-resolution images, as they are important in real-life applications. Moreover, it has the advantage of combining convolutional neural network-based dictionary learning, autoencoder image enhancement, and noise removal. Furthermore, residual neural network training with improved preprocessing creates an efficient and versatile single-image super-resolution network.
Subject
General Mathematics,Engineering (miscellaneous),Computer Science (miscellaneous)
Reference29 articles.
1. High-resolution image recovery from image-plane arrays, using convex projections;Henry;J. Opt. Soc. Am.,1989
2. Signal-processing based method for acquiring very high resolution images with multiple cameras and its theoretical analysis;Komatsu;IEE Proc. I Commun. Speech Vis.,1993
3. Multi-frame image restoration and registration;Tsai;Adv. Comput. Vis. Image Process.,1984
4. Improving Resolution by Image Registration;Irani;CVGIP Graph. Models Image Process.,1991
5. Borman, S., and Stevenson, R. (1998, January 9–12). Super-Resolution from Image Sequences A Review. Proceedings of the Midwest Symposium on Circuits and Systems, Notre Dame, IN, USA.
Cited by
3 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献