Automatic Multisegmentation of Abdominal Organs by Level Set with Weighted Global and Local Forces

Authors
Vania, MalindaKim, SunheeLee, Deukhee
Issue Date
2016-07-11
Publisher
IEEE
Citation
IEEE EMBS International Student Conference (ISC)
Abstract
The automatic multisegmentation of computed tomography (CT) data of the upper abdomen poses a challenge with regard to accuracy, automation, and strength. In this paper, we propose automatic organ segmentation to segment the kidney, vena, and liver on the basis of a gray-level analysis. Furthermore, the method has been developed by utilizing the level set with weighted global and local forces to handle the topological data of organs and tissues to improve the accuracy of multi organ segmentation. The proposed methods were tested by performing segmentation of three abdominal organs (liver, kidneys, and inferior vena cava) from several CT datasets, and good segmentation results and visualization of 3D models were obtained.
URI
https://pubs.kist.re.kr/handle/201004/114944
Appears in Collections:
KIST Conference Paper > 2016
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