CVLGNEIVMLDec 8, 2020

Bayesian Image Reconstruction using Deep Generative Models

arXiv:2012.04567v550 citations
AI Analysis

This work provides a more generalizable and training-free approach to image reconstruction, which is beneficial for practitioners dealing with diverse image data and limited computational resources for re-training.

This paper addresses the problem of image reconstruction (super-resolution and in-painting) without requiring re-training for distribution shifts or latent variable changes. The authors propose Bayesian Reconstruction through Generative Models (BRGM), which uses a single pre-trained StyleGAN2 generator to achieve performance competitive with task-specific SOTA methods across three diverse datasets (60,000 Flickr Faces, 240,000 chest X-rays, 7,329 brain MRI scans) without any training or dataset-specific hyperparameter tuning.

Machine learning models are commonly trained end-to-end and in a supervised setting, using paired (input, output) data. Examples include recent super-resolution methods that train on pairs of (low-resolution, high-resolution) images. However, these end-to-end approaches require re-training every time there is a distribution shift in the inputs (e.g., night images vs daylight) or relevant latent variables (e.g., camera blur or hand motion). In this work, we leverage state-of-the-art (SOTA) generative models (here StyleGAN2) for building powerful image priors, which enable application of Bayes' theorem for many downstream reconstruction tasks. Our method, Bayesian Reconstruction through Generative Models (BRGM), uses a single pre-trained generator model to solve different image restoration tasks, i.e., super-resolution and in-painting, by combining it with different forward corruption models. We keep the weights of the generator model fixed, and reconstruct the image by estimating the Bayesian maximum a-posteriori (MAP) estimate over the input latent vector that generated the reconstructed image. We further use variational inference to approximate the posterior distribution over the latent vectors, from which we sample multiple solutions. We demonstrate BRGM on three large and diverse datasets: (i) 60,000 images from the Flick Faces High Quality dataset (ii) 240,000 chest X-rays from MIMIC III and (iii) a combined collection of 5 brain MRI datasets with 7,329 scans. Across all three datasets and without any dataset-specific hyperparameter tuning, our simple approach yields performance competitive with current task-specific state-of-the-art methods on super-resolution and in-painting, while being more generalisable and without requiring any training. Our source code and pre-trained models are available online: https://razvanmarinescu.github.io/brgm/.

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