Nonparametric neighborhood statistics for MRI denoising

Update Item Information
Publication Type technical report
School or College College of Engineering
Department Computing, School of
Program Advanced Research Projects Agency
Creator Awate, Suyash P.; Whitaker, Ross T.
Title Nonparametric neighborhood statistics for MRI denoising
Date 2005-04-18
Description This paper presents a novel method for denoising MR images that relies on an optimal estimation, combining a likelihood model with an adaptive image prior. The method models images as random fields and exploits the properties of independent Rician noise to learn the higher-order statistics of image neighborhoods from corrupted input data. It uses these statistics as priors within a Bayesian denoising framework. This paper presents an information-theoretic method for characterizing neighborhood structure using nonparametric density estimation. The formulation generalizes easily to simultaneous denoising of multimodal MRI, exploiting the relationships between modalities to further enhance performance. The method, relying on the information content of input data for noise estimation and setting important parameters, does not require significant parameter tuning. Qualitative and quantitative results on real, simulated, and multimodal data, including comparisons with other approaches, demonstrate the effectiveness of the method.
Type Text
Publisher University of Utah
Subject MRI denoising
Subject LCSH Magnetic resonance imaging; Imaging systems -- Image quality
Language eng
Bibliographic Citation Awate, Suyash P.; Whitaker, Ross T. (2005). Nonparametric neighborhood statistics for MRI denoising. UUCS-05-007.
Series University of Utah Computer Science Technical Report
Relation is Part of ARPANET
Rights Management ©University of Utah
Format Medium application/pdf
Format Extent 682,368 bytes
Source University of Utah School of Computing
ARK ark:/87278/s67w6wvw
Setname ir_uspace
ID 707546
Reference URL https://collections.lib.utah.edu/ark:/87278/s67w6wvw