Title of article
A topological sampling theorem for Robust boundary reconstruction and image segmentation Original Research Article
Author/Authors
Hans Meine، نويسنده , , Ullrich K?the، نويسنده , , Peer Stelldinger، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2009
Pages
18
From page
524
To page
541
Abstract
Existing theories on shape digitization impose strong constraints on admissible shapes, and require error-free data. Consequently, these theories are not applicable to most real-world situations. In this paper, we propose a new approach that overcomes many of these limitations. It assumes that segmentation algorithms represent the detected boundary by a set of points whose deviation from the true contours is bounded. Given these error bounds, we reconstruct boundary connectivity by means of Delaunay triangulation and image-shapes. We prove that this procedure is guaranteed to result in topologically correct image segmentations under certain realistic conditions. Experiments on real and synthetic images demonstrate the good performance of the new method and confirm the predictions of our theory.
Keywords
Delaunay triangulation , Topology preservation , Edgel linking , Alpha-shapes , Geometric sampling theorem
Journal title
Discrete Applied Mathematics
Serial Year
2009
Journal title
Discrete Applied Mathematics
Record number
886989
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