Title
Multicomponent MR image denoising
Abstract
Magnetic Resonance images are normally corrupted by random noise from the measurement process complicating the automatic feature extraction and analysis of clinical data. It is because of this reason that denoising methods have been traditionally applied to improve MR image quality. Many of these methods use the information of a single image without taking into consideration the intrinsic multicomponent nature of MR images. In this paper we propose a new filter to reduce random noise in multicomponent MR images by spatially averaging similar pixels using information from all available image components to perform the denoising process. The proposed algorithm also uses a local Principal Component Analysis decomposition as a postprocessing step to remove more noise by using information not only in the spatial domain but also in the intercomponent domain dealing in a higher noise reduction without significantly affecting the original image resolution. The proposed method has been compared with similar state-of-art methods over synthetic and real clinical multicomponent MR images showing an improved performance in all cases analyzed.
Year
DOI
Venue
2009
10.1155/2009/756897
Int. J. Biomedical Imaging
Keywords
Field
DocType
biomedical research,bioinformatics
Noise reduction,Computer vision,Computer science,Random noise,Image quality,Feature extraction,Pixel,Artificial intelligence,Image denoising,Image resolution,Principal component analysis
Journal
Volume
ISSN
Citations 
2009,
1687-4188
7
PageRank 
References 
Authors
0.58
13
6
Name
Order
Citations
PageRank
José V. Manjón179539.24
Neil A. Thacker251772.16
Juan J. Lull31597.33
Gracián García-Martí41608.37
Luís Martí-Bonmatí51597.33
Montserrat Robles6106458.83