MR Slice Profile Estimation by Learning to Match Internal Patch Distributions
Shuo Han, Samuel Remedios, Aaron Carass, Michael Sch\"ar, Jerry L., Prince

TL;DR
This paper introduces a GAN-based method to estimate the slice selection profile in MR images by matching internal patch distributions, enabling improved super-resolution and resolution measurement without external data.
Contribution
It presents a novel approach to estimate slice profiles directly from images using internal patch distribution matching within a GAN framework.
Findings
Effective slice profile estimation from images without external data
Improved super-resolution performance using estimated profiles
Tool for measuring image resolution
Abstract
To super-resolve the through-plane direction of a multi-slice 2D magnetic resonance (MR) image, its slice selection profile can be used as the degeneration model from high resolution (HR) to low resolution (LR) to create paired data when training a supervised algorithm. Existing super-resolution algorithms make assumptions about the slice selection profile since it is not readily known for a given image. In this work, we estimate a slice selection profile given a specific image by learning to match its internal patch distributions. Specifically, we assume that after applying the correct slice selection profile, the image patch distribution along HR in-plane directions should match the distribution along the LR through-plane direction. Therefore, we incorporate the estimation of a slice selection profile as part of learning a generator in a generative adversarial network (GAN). In this…
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Taxonomy
TopicsAdvanced Image Processing Techniques · Image and Signal Denoising Methods · Image Processing Techniques and Applications
