A GAN-based model for single image super-resolution on consumer-grade GPUs: comprehensive analysis and development of MSRGAN
Abstract
In a world where visual content plays a crucial role in anything imaginable, the need
for sharper, more detailed images has never been more important. This research
paper explores innovative approaches to improve the quality of single images through
the application of Deep Learning techniques, specifically GAN architectures. The
research focuses on developing an efficient and feasible model that can be trained
in a consumer-grade GPU. Among various architectures, the research focused on
the RRDB model for further development. With the modification of the RRDB
model and the implementation of activation functions combination and proper loss
functions, this research seeks to achieve enhanced performance and effectiveness.
Finally, the proposed model MSRGAN was developed which was capable of training
on a consumer-grade GPU with an average amount of video RAM. The model
possesses the capability for 4x upscaling. For testing the performance, the research
used PSNR and SSIM evaluation metrics where the MSRGAN has outperformed
the basic SRGAN and ESRGAN.