Optimal Surface Segmentation with Convex Priors in Irregularly Sampled Space
Abhay Shah, Michael D. Abramoff, Xiaodong Wu

TL;DR
This paper introduces a novel graph-based segmentation method that leverages convex priors and irregular sampling to achieve subvoxel accuracy in volumetric datasets, especially in medical imaging.
Contribution
It presents a generalized approach allowing non-uniform node spacing in graph segmentation, enabling subvoxel precision by exploiting partial volume information.
Findings
Achieved highly accurate subvoxel segmentation in ultrasound datasets.
Validated on 10 intravascular ultrasound datasets with consistent success.
Method extends to higher-dimensional segmentation tasks.
Abstract
Optimal surface segmentation is a state-of-the-art method used for segmentation of multiple globally optimal surfaces in volumetric datasets. The method is widely used in numerous medical image segmentation applications. However, nodes in the graph based optimal surface segmentation method typically encode uniformly distributed orthogonal voxels of the volume. Thus the segmentation cannot attain an accuracy greater than a single unit voxel, i.e. the distance between two adjoining nodes in graph space. Segmentation accuracy higher than a unit voxel is achievable by exploiting partial volume information in the voxels which shall result in non-equidistant spacing between adjoining graph nodes. This paper reports a generalized graph based multiple surface segmentation method with convex priors which can optimally segment the target surfaces in an irregularly sampled space. The proposed…
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