Hi, I don’t want to volunteer for this project, but I just wanted to mention that the 3D skeletonization from ITK is easily accessible to Python through SimpleITK, see example below for the lobster dataset. SimpleITK could be used for comparison or validation of the proposed scikit-image algorithm. Kind Regards, Kevin PS: is there another way to load those *.pvm datasets in Python without converting them to raw and hardcoding the image dimension and pixel type? An skimage.io.imread() plugin?
On 3 Nov 2015, at 21:18, Emmanuelle Gouillart <emmanuelle.gouillart@nsup.org> wrote:
Don't forget that Fiji's code is mostly GPL, so don't try to copy it, at least not without first discussing dual licensing with the author(s).
Excellent point. Actually I'm only using the Fiji page as a way to find the paper by Lee et al. again :-).
On Tue, Nov 3, 2015 at 12:55 PM, Josh Warner <silvertrumpet999@gmail.com> wrote:
Should we use/apply this to a particular volumetric dataset while prototyping different methods, to ensure accurate comparisons?
Should anisotropic, regularly sampled voxels be supported?
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