Litcius/Paper detail

Deep Gaussian Scale Mixture Prior for Image Reconstruction

Tao Huang, Xin Yuan, Weisheng Dong, Jinjian Wu, Guangming Shi

2023IEEE Transactions on Pattern Analysis and Machine Intelligence40 citationsDOI

Abstract

Image reconstruction from partial observations has attracted increasing attention. Conventional image reconstruction methods with hand-crafted priors often fail to recover fine image details due to the poor representation capability of the hand-crafted priors. Deep learning methods attack this problem by directly learning mapping functions between the observations and the targeted images can achieve much better results. However, most powerful deep networks lack transparency and are nontrivial to design heuristically. This paper proposes a novel image reconstruction method based on the Maximum a Posterior (MAP) estimation framework using learned Gaussian Scale Mixture (GSM) prior. Unlike existing unfolding methods that only estimate the image means (i.e., the denoising prior) but neglected the variances, we propose characterizing images by the GSM models with learned means and variances through a deep network. Furthermore, to learn the long-range dependencies of images, we develop an enhanced variant based on the Swin Transformer for learning GSM models. All parameters of the MAP estimator and the deep network are jointly optimized through end-to-end training. Extensive simulation and real data experimental results on spectral compressive imaging and image super-resolution demonstrate that the proposed method outperforms existing state-of-the-art methods.

Topics & Concepts

Artificial intelligenceComputer scienceDeep learningPrior probabilityIterative reconstructionPattern recognition (psychology)Computer visionImage restorationGaussianNoise reductionImage (mathematics)Image processingBayesian probabilityPhysicsQuantum mechanicsAdvanced Image Processing TechniquesSparse and Compressive Sensing TechniquesImage and Signal Denoising Methods