Image Super-resolution (SR) is an underdetermined inverse problem, where a large number of plausible high-resolution images can explain the same downsampled image.

https://arxiv.org/abs/1610.04490v1 Amortised MAP Inference for Image Super-resolution

Here we introduce new methods for amortised MAP inference whereby we calculate the MAP estimate directly using a convolutional neural network. We first introduce a novel neural network architecture that performs a projection to the affine subspace of valid SR solutions ensuring that the high resolution output of the network is always consistent with the low resolution input. We show that, using this architecture, the amortised MAP inference problem reduces to minimising the cross-entropy between two distributions, similar to training generative models. We propose three methods to solve this optimisation problem: (1) Generative Adversarial Networks (GAN) (2) denoiser-guided SR which backpropagates gradient-estimates from denoising to train the network, and (3) a baseline method using a maximum-likelihood-trained image prior. Our experiments show that the GAN based approach performs best on real image data, achieving particularly good results in photo-realistic texture SR.

https://arxiv.org/abs/1606.01299 RAISR: Rapid and Accurate Image Super Resolution

In our proposed approach, the run-time is more than one to two orders of magnitude faster than the best competing methods currently available, while producing results comparable or better than state-of-the-art.

https://github.com/Tetrachrome/subpixel

https://arxiv.org/abs/1612.07919 EnhanceNet: Single Image Super-Resolution Through Automated Texture Synthesis