Difference between revisions of "Projects:DTIRicianNoiseRemoval"

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'''Objective:''' Provide a software tool for clinicians that will filter diffusion tensor images using our Rician noise removal algorithm. The method should be completely automatic and give the user the option of reviewing the images to make sure that the results are acceptable.
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Back to [[NA-MIC_Collaborations|NA-MIC_Collaborations]], [[Algorithm:Utah|Utah Algorithms]]
  
'''Progress:''' Developed a Slicer module for our DT-MRI Rician noise removal during the [[2007_Project_Half_Week|2007 Project Half Week]]. Also enhanced the method by including an automatic method for determining the noise sigma in the image. This makes the algorithm completely automatic, i.e., there are no free parameters. Also, since the module is implemented in Slicer, images can be reviewed directly in the Slicer program after applying the filter.
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= DTI Rician Noise Removal =
  
''References:''
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[[Image:DTIFiltering.jpg|thumb|512px|Coronal slice from a noisy DTI (left). The same slice after applying our Rician noise DTI filtering method (right)]]
* Basu, S., Fletcher, P.T., Whitaker, R., "Rician Noise Removal in Diffusion Tensor MRI," presented at Medical Image Computing and Computer-Assisted Intervention, MICCAI 2006, LNCS 4190, pp. 117--125. [[Media:BasuDTIFilteringMICCAI2006.pdf| PDF of paper]]
 
  
'''Key Investigators:'''
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Our Objective is to provide a software tool for clinicians that will filter diffusion tensor images using our Rician noise removal algorithm. The method should be completely automatic and give the user the option of reviewing the images to make sure that the results are acceptable.
* Tom Fletcher, Saurav Basu, McKay Davis, Ross Whitaker (Utah).
 
  
'''Links:'''
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= Description =
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|[[Image:DTIFiltering.jpg|thumb|512px|Coronal slice from a noisy DTI (left). The same slice after applying our Rician noise DTI filtering method (right).]]
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Developed a Slicer module for our DT-MRI Rician noise removal during the [[2007_Project_Half_Week|2007 Project Half Week]]. Also enhanced the method by including an automatic method for determining the noise sigma in the image. This makes the algorithm completely automatic, i.e., there are no free parameters. Also, since the module is implemented in Slicer, images can be reviewed directly in the Slicer program after applying the filter.
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= Publications =
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[http://www.na-mic.org/Special:Publications?text=Projects%3ADTIRicianNoiseRemoval&submit=Search&words=all&title=checked&keywords=checked&authors=checked&abstract=checked&sponsors=checked&searchbytag=checked| NA-MIC Publications Database]
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= Key Investigators =
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* Utah: Tom Fletcher, Saurav Basu, McKay Davis, Ross Whitaker
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= Links =
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Project Week Results: [[Media:2007_Project_Half_Week_RicianNoiseDTI.ppt|Jan 2007]]

Latest revision as of 19:57, 27 November 2007

Home < Projects:DTIRicianNoiseRemoval
Back to NA-MIC_Collaborations, Utah Algorithms

DTI Rician Noise Removal

Coronal slice from a noisy DTI (left). The same slice after applying our Rician noise DTI filtering method (right)

Our Objective is to provide a software tool for clinicians that will filter diffusion tensor images using our Rician noise removal algorithm. The method should be completely automatic and give the user the option of reviewing the images to make sure that the results are acceptable.

Description

Developed a Slicer module for our DT-MRI Rician noise removal during the 2007 Project Half Week. Also enhanced the method by including an automatic method for determining the noise sigma in the image. This makes the algorithm completely automatic, i.e., there are no free parameters. Also, since the module is implemented in Slicer, images can be reviewed directly in the Slicer program after applying the filter.

Publications

NA-MIC Publications Database

Key Investigators

  • Utah: Tom Fletcher, Saurav Basu, McKay Davis, Ross Whitaker

Links

Project Week Results: Jan 2007