em_classify
Classify voxels using expectation-maximization algorithm.
em_classify [options] <input_1> ... <input_n> <output>
DESCRIPTION
em_classify performs tissue classification on one or more input MINC volumes using the Expectation-Maximization (EM) algorithm. The EM algorithm iteratively estimates class means, standard deviations, and voxel membership probabilities to segment the input into a specified number of tissue classes.
Multiple input volumes (e.g., T1, T2, PD) can be provided for multispectral classification. Initial class parameters can be supplied via command-line options or estimated from training labels. Spatial prior probability maps can also be used to guide the classification.
OPTIONS
--verbose- Print progress information during processing.
--clobber- Overwrite existing output files.
--maskmask.mnc- Restrict classification to voxels within the specified binary mask volume.
--traintrain.mnc- Use the given label volume to initialize class parameters (means and standard deviations) from training data.
--meansc1,c2,…,cn- Specify initial class means as a comma-separated list.
--sigmas1,…,sn- Specify initial class standard deviations as a comma-separated list.
--classesn- Set the number of tissue classes for classification.
--probp1,p2,…- Specify a priori class probabilities as a comma-separated list. Values should sum to 1.
--itern- Set the maximum number of EM iterations.
--priorsp1.mnc,p2.mnc,…,pn.mnc- Provide spatial prior probability maps for each class as a comma-separated list of MINC files.
--save_probbase- Save posterior class probability maps using the specified base filename.
--debug- Enable debug output.
--interpolate- Use interpolation when resampling inputs.
EXAMPLES
Classify a T1 volume into 3 classes using a brain mask:
em_classify --classes 3 --mask brainmask.mnc t1.mnc classified.mnc
Classify with initial means and standard deviations:
em_classify --classes 3 --means 300,700,1000 --sigma 50,80,100 t1.mnc classified.mnc
Classify using spatial priors and save probability maps:
em_classify --classes 3 --priors csf_prior.mnc,gm_prior.mnc,wm_prior.mnc \
--save_prob prob_ --mask brainmask.mnc t1.mnc classified.mnc
AUTHOR
Vladimir S. Fonov - McConnell Brain Imaging Centre, Montreal Neurological Institute, McGill University.
COPYRIGHTS
Copyright © 2011 by Vladimir S. Fonov