Implementation of Super Resolution in Images Based on Generative Adversarial Network
K. Srinivasa Reddy, Vinodh P Vijayan, Ayan Das Gupta, Prabhdeep Singh, R.G. Vidhya, Dhiraj Kapila
Abstract
A 3D visualization of a microscopic object is provided by the integral imaging microscopy system. A generative-adversarial-network (GAN) relied on super resolution (SR) algorithm is suggested in this research to improve resolution. The generator in GAN network regresses the highresolution (HR) outcome out of the low-resolution (LR) input image, where the discriminator differentiates among the original as well as generated images. It could perhaps recover the edges and boost the resolution besides 2, 4, or indeed 8 times without compromising image quality for different sector in different field. The framework is validated using a variation of decreased microscopic specimen images as well as appropriately develops images with considerable directional view and compared with each other to get the best model among them in different sector. The quantifiable investigation reveals that the suggested framework outperforms the existing algorithms for microscopic images.