Vessel branch segmentation

Segment the vessel branches from dynamic image of fluorescent microscopy
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Mise à jour 5 avr. 2012

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Segment the blood vessels from a dynamic image of fluorescent microscopy.

== Install ======

- Add all attached files to matlab path

- Download "Better Skeletonization" from following URL and add to matlab path
http://www.mathworks.com/matlabcentral/fileexchange/11123-better-skeletonization

== Instruction =========
1. Save time lapse images by tiff format in a directory.
The alphabetical order of file name must correspond to the order of time frame.

2. Read Tiff format files in a directory and save it in a matlab file.
>> imgData = VBSreadTiff('directory name');
Here, "imgData" is a structure of x,y,t image and the header of tiff.

3. Lounch VesselBranchSegmentation
>> VesselBranchSegmentation

4. In Menu, Select "File > New", then select a saved matfile.

5. In Menu, Select "Estimation > Vessel Mask", then vessel region is extracted from vessels.(*)

6. In Menu, Select "Estimation > Vessel Class", then vessel region is classified into artery and vein.(*)
This process takes a bit long time (~ 1 hour).

7. In Menu, Select "Estimation > Segmentation to Branches".
New window appears and skeleton of artery mask is calculated. (**)
Then press "To branch" button for segmentation to vessel branches.
After closing the skeleton-shown window, repeat the same process for vein region.

(*) The extracted mask can be modified by the edit tool.
Turn "Editable checkbox" on to use the edit tool.
See the document of impoly function for details.

(**) The undesired skeleton will be calculated for low SNR images because of the ambiguous edge of vessel.
The skeleton can be manually modified by the edit tool in the window.

Citation pour cette source

Hiroshi Kawaguchi (2024). Vessel branch segmentation (https://www.mathworks.com/matlabcentral/fileexchange/36031-vessel-branch-segmentation), MATLAB Central File Exchange. Récupéré le .

Compatibilité avec les versions de MATLAB
Créé avec R2011a
Compatible avec toutes les versions
Plateformes compatibles
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Inspiré par : Better Skeletonization

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Version Publié le Notes de version
1.0.0.0