Estimation of 3T MR images from 1.5T images regularized with Physics based Constraint
Prabhjot Kaur, Atul Singh Minhas, Chirag Kamal Ahuja, Anil, Kumar Sao

TL;DR
This paper presents an unsupervised method to enhance 1.5T MRI images to 3T-like quality using a physics-based constraint, avoiding the need for paired training data or image registration.
Contribution
It introduces a novel unsupervised framework that estimates high-field MRI images from low-field images by modeling a linear transformation and applying a physics-based constraint.
Findings
Improved image quality of 1.5T images to 3T-like images.
Better tissue segmentation and volume quantification.
Outperforms existing methods in quality enhancement.
Abstract
Limited accessibility to high field MRI scanners (such as 7T, 11T) has motivated the development of post-processing methods to improve low field images. Several existing post-processing methods have shown the feasibility to improve 3T images to produce 7T-like images [3,18]. It has been observed that improving lower field (LF, <=1.5T) images comes with additional challenges due to poor image quality such as the function mapping 1.5T and higher field (HF, 3T) images is more complex than the function relating 3T and 7T images [10]. Except for [10], no method has been addressed to improve <=1.5T MRI images. Further, most of the existing methods [3,18] including [10] require example images, and also often rely on pixel to pixel correspondences between LF and HF images which are usually inaccurate for <=1.5T images. The focus of this paper is to address the unsupervised framework for quality…
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