A New Similarity Measure for Non-Local Means Filtering of MRI Images
Sudipto Dolui, Alan Kuurstra, Iv\'an C. Salgado Patarroyo, Oleg V., Michailovich

TL;DR
This paper introduces a new similarity measure for non-local means filtering tailored to MRI images, accounting for Rician noise statistics, leading to improved image denoising accuracy especially at low SNR levels.
Contribution
It presents a novel similarity measure for NLM filtering that considers Rician noise, addressing limitations of previous methods assuming Gaussian noise.
Findings
Enhanced MRI image denoising accuracy
Better performance at low SNR levels
Validated with in silico and in vivo data
Abstract
The acquisition of MRI images offers a trade-off in terms of acquisition time, spatial/temporal resolution and signal-to-noise ratio (SNR). Thus, for instance, increasing the time efficiency of MRI often comes at the expense of reduced SNR. This, in turn, necessitates the use of post-processing tools for noise rejection, which makes image de-noising an indispensable component of computer assistance diagnosis. In the field of MRI, a multitude of image de-noising methods have been proposed hitherto. In this paper, the application of a particular class of de-noising algorithms - known as non-local mean (NLM) filters - is investigated. Such filters have been recently applied for MRI data enhancement and they have been shown to provide more accurate results as compared to many alternative de-noising algorithms. Unfortunately, virtually all existing methods for NLM filtering have been derived…
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Taxonomy
TopicsImage and Signal Denoising Methods · Photoacoustic and Ultrasonic Imaging · Ultrasound Imaging and Elastography
