Difference between revisions of "Seg EM"

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(Created page with "seg_EM is a general purpose intensity based image segmentation tool. In it's simplest form, it takes in one 2D or 3D image and segments it in n classes. This function has impl...")
 
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seg_EM is a general purpose intensity based image segmentation tool. In it's simplest form, it takes in one 2D or 3D image and segments it in n classes. This function has implemented several other improvements (Please click the hyperlinks to go to specific sections):
 
seg_EM is a general purpose intensity based image segmentation tool. In it's simplest form, it takes in one 2D or 3D image and segments it in n classes. This function has implemented several other improvements (Please click the hyperlinks to go to specific sections):
• Masking for region-of-interest selection [link]
+
* Input anatomical priors, either as a series of images or as a 4D image.  
Input anatomical priors, either as a series of images or as a 4D image. These priors should be pre-registered [link]
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** These priors should be pre-registered using for example [http://cmictig.cs.ucl.ac.uk/wiki/index.php/NiftyReg NiftyReg].
Markov Random Field for spatial consistency [link]
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* Markov Random Field for spatial consistency
Bias field inhomogeneity correction to compensate for B0 non-uniformities. The Bias corrected image can also be outputted [link]
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* Bias field inhomogeneity correction to compensate for B0 non-uniformities as per  Van Leemput et al. TMI (1999) [http://nmr.mgh.harvard.edu/~koen/VanLeemputTMI1999a.pdf PDF].
Outlier detection as in Van Leemput et al. TMI (2003) [link]
+
** The Bias corrected image can also be outputted
Prior relaxation as in Cardoso et al. MICCAI (2011) [link]
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* Outlier detection as in Van Leemput et al. TMI (2001) [http://nmr.mgh.harvard.edu/~koen/VanLeemputTMI2001.pdf PDF]
Semi-conjugate prior over the model parameters as explained in Cardoso et al. MICCAI (2011) [link]
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* Prior relaxation as in Cardoso et al. MICCAI (2011) [http://www.ncbi.nlm.nih.gov/pubmed/22906793 Link]
 
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* Semi-conjugate prior over the model parameters as explained in Cardoso et al. MICCAI (2011) [http://www.ncbi.nlm.nih.gov/pubmed/22906793 Link]
  
 
The help for this function can be obtained by running  
 
The help for this function can be obtained by running  
  
 
seg_EM -h
 
seg_EM -h

Revision as of 16:50, 8 June 2016

seg_EM is a general purpose intensity based image segmentation tool. In it's simplest form, it takes in one 2D or 3D image and segments it in n classes. This function has implemented several other improvements (Please click the hyperlinks to go to specific sections):

  • Input anatomical priors, either as a series of images or as a 4D image.
    • These priors should be pre-registered using for example NiftyReg.
  • Markov Random Field for spatial consistency
  • Bias field inhomogeneity correction to compensate for B0 non-uniformities as per Van Leemput et al. TMI (1999) PDF.
    • The Bias corrected image can also be outputted
  • Outlier detection as in Van Leemput et al. TMI (2001) PDF
  • Prior relaxation as in Cardoso et al. MICCAI (2011) Link
  • Semi-conjugate prior over the model parameters as explained in Cardoso et al. MICCAI (2011) Link

The help for this function can be obtained by running

seg_EM -h