Title:
Hybrid geodesic region-based curve evolutions for image segmentation
Hybrid geodesic region-based curve evolutions for image segmentation
Author(s)
Lankton, Shawn
Nain, Delphine
Yezzi, Anthony
Tannenbaum, Allen R.
Nain, Delphine
Yezzi, Anthony
Tannenbaum, Allen R.
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Abstract
In this paper we present a gradient descent flow based on a novel energy functional that is capable of producing robust and accurate segmentations of medical images. This flow is a hybridization of local geodesic active contours and more global region-based active contours. The combination of these two methods allows curves deforming under this energy to find only significant local minima and delineate object borders despite noise, poor edge information, and heterogeneous intensity profiles. To accomplish this, we construct a cost function that is evaluated along the evolving curve. In this cost, the value at each point on the curve is based on the analysis of interior and exterior means in a local neighborhood around that point. We also demonstrate a novel mathematical derivation used to implement this and other similar flows. Results for this algorithm are compared to standard techniques using medical and synthetic images to demonstrate the proposed method's robustness and accuracy as compared to both edge-based and region-based alone.
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Date Issued
2007-02-18
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Proceedings