The researchers dedicated a special section of their study to Magnetic Resonance Imaging (MRI). This medical field is one of those applications that can particularly benefit from a software that can forgo the need for clean images."Many recent MRI techniques attempt to increase apparent resolution by, for example, generative adversarial networks (GAN) (Quan et al., 2017). However, in terms of PSNR, our results quite closely match their reported results," concludes the study's MRI section.
However, the same drawbacks apply to softwares that employ clean inputs. "Of course, there is no free lunch – we cannot learn to pick up features that are not there in the input data – but this applies equally to training with clean targets," reads the paper.The team's neural network was trained on 50,000 images in the ImageNet validation set using the NVIDIA Tesla P100 GPUs with the cuDNN accelerated Tensor Flow deep learning framework. It was then further validated on three different data sets.
Source : Interesting Engineering