[–out_dir str] [–out_mask str] [–out_masked str]
input_files Workflow wrapping the median_otsu segmentation method. Applies median_otsu segmentation on each file found by ‘globing’ input_files Path to the input volumes. This path may contain wildcards to process multiple inputs at once. show this help message and exit Save mask. Radius (in voxels) of the applied median filter. Number of pass of the median filter. If True, the masked input_volumes will also be cropped using the bounding box defined by the masked data. For example, if diffusion images are of 1x1x1 (mm^3) or higher resolution auto-cropping could reduce their size in memory and speed up some of the analysis. –vol_idx [int …] 1D array representing indices of Output directory. (default current directory) Name of the mask volume to be saved. Name of the masked volume to be saved. Garyfallidis, E., M. Brett, B. Amirbekian, A. Rokem, S. Van Der Walt, M. Descoteaux, and I. Nimmo-Smith. Dipy, a library for the analysis of diffusion MRI data. Frontiers in Neuroinformatics, 1-18, 2014.dipy_median_otsu
Usage
input_files
and saves the results in a directory specified by out_dir
.Positional Arguments
Optional Arguments
axis=-1
of a 4D input_volume. From the command line use something like 3 4 5 6. From script use something like [3, 4, 5, 6]. This input is required for 4D volumes.
–dilate int number of iterations for binary dilation.Output Arguments(Optional)
References