MRI Banding Removal via Adversarial Training

01/23/2020
by   Aaron Defazio, et al.
14

MRI images reconstructed from sub-sampled data using deep learning techniques often show a characteristic banding, which is particularly strong in low signal-to-noise regions of the reconstructed image. In this work, we propose the use of an adversarial loss that penalizes banding structures without requiring any human annotation. Our technique greatly reduces the appearance of banding, without requiring any additional computation or post-processing at reconstruction time. We report the results of a blind comparison against a strong baseline by a group of expert evaluators (board-certified radiologists), where our approach is ranked superior at banding removal with no statistically significant loss of detail.

READ FULL TEXT

page 1

page 2

page 4

page 8

research
08/24/2022

A Deep Learning Approach Using Masked Image Modeling for Reconstruction of Undersampled K-spaces

Magnetic Resonance Imaging (MRI) scans are time consuming and precarious...
research
06/28/2018

Adversarial and Perceptual Refinement for Compressed Sensing MRI Reconstruction

Deep learning approaches have shown promising performance for compressed...
research
11/04/2019

Field of View Extension in Computed Tomography Using Deep Learning Prior

In computed tomography (CT), data truncation is a common problem. Images...
research
12/09/2018

Adversarial Sparse-View CBCT Artifact Reduction

We present an effective post-processing method to reduce the artifacts f...
research
02/28/2020

Review: Noise and artifact reduction for MRI using deep learning

For several years, numerous attempts have been made to reduce noise and ...
research
06/06/2013

K-Algorithm A Modified Technique for Noise Removal in Handwritten Documents

OCR has been an active research area since last few decades. OCR perform...
research
04/04/2019

Blind Visual Motif Removal from a Single Image

Many images shared over the web include overlaid objects, or visual moti...

Please sign up or login with your details

Forgot password? Click here to reset