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2009 3rd International Conference on Bioinformatics and Biomedical Engineering 2009
DOI: 10.1109/icbbe.2009.5162849
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Fast Parametric Active Contour to Improve 3D Segmentation of Tubular Structures

Abstract: Segmentation of three dimensional (3D) image data is an important task in medical imaging. The segmentation of tubular structures like e.g. colons, blood vessels or bronchioli is, thereby, an important subtask. Qualitative segmentation of subpleural alveoli in microscopic videos (time as the third dimension) is the objective of the present study. The proposed approach attempts to improve a given segmentation that was obtained by a two dimensional parametric active contour algorithm with an additional smoothnes… Show more

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“…For elastic registration of the surfaces, we used a parametric active contour model, based on the algorithms described in [54][55][56], commonly used for segmentation or motion tracking in medical images (see e.g. [57][58][59]). One advantage of this technique is its capability to project nodes from the source model onto the reference model while maintaining a natural spreading of the nodes.…”
Section: Step 2: Elastic Surface Registrationmentioning
confidence: 99%
“…For elastic registration of the surfaces, we used a parametric active contour model, based on the algorithms described in [54][55][56], commonly used for segmentation or motion tracking in medical images (see e.g. [57][58][59]). One advantage of this technique is its capability to project nodes from the source model onto the reference model while maintaining a natural spreading of the nodes.…”
Section: Step 2: Elastic Surface Registrationmentioning
confidence: 99%