Skeletonization by blocks for large 3D datasets: application to brain microcirculation

Apr 18, 2004·
Fouard Céline
,
Cassot Francis
,
Malandain Grégoire
,
Mazel Christophe
,
Prohaska Steffen
,
Asselot Didier
,
Westerhoff Malte
,
Marc-Vergnes Jean-Pierre
· 0 min read
Abstract
Skeletonsare compactrepresentationsthat allowmathematical analysis of objects. A skeleton must be homotopic, thin and medial in relation to the object it represents. Numerous approaches already exist which focus on computational efficiency. However, when dealing with data too large to be loaded into the main memory of a personal computer, such approaches can no longer be used. We present in this article a skeletonization algorithm that processes the data locally (in sub-images) while preserving global properties (medial localization). Our privileged application is the study of the cerebral micro-vascularisation, and we show some results obtained on a mosaic of 3-D images acquired by confocal microscopy.
Type
Publication
International Symposium on Biomedical Imaging: From Nano to Macro (ISBI'04)
publication