Conditional Normalizing Flows for Low-Dose Computed Tomography Image Reconstruction

Abstract

Image reconstruction from computed tomography (CT) measurement is a challenging statistical inverse problem since a high-dimensional conditional distribution needs to be estimated. Based on training data obtained from high-quality reconstructions, we aim to learn a conditional density of images from noisy low-dose CT measurements. To tackle this problem, we propose a hybrid conditional normalizing flow, which integrates the physical model by using the filtered back-projection as conditioner. We evaluate our approach on a low-dose CT benchmark and demonstrate superior performance in terms of structural similarity of our flow-based method compared to other deep learning based approaches.

Publication
In ICML Workshop on Invertible Neural Networks, Normalizing Flows, and Explicit Likelihood Models
Jens Behrmann
Jens Behrmann
Postdoctoral Researcher

My research interests include machine learning, neural networks and applications in life sciences and industry.