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3D Medical Image Segmentation Based on Rough Set Theory

3D Medical Image Segmentation Based on Rough Set Theory
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摘要 This paper presents a method which uses multiple types of expert knowledge together in 3D medical image segmentation based on rough set theory. The focus of this paper is how to approximate a ROI(region of interest) when there are multiple types of expert knowledge. Based on rough set theory, the image can be split into three regions: positive regions; negative regions; boundary regions. With multiple knowledge we refine ROI as an intersection of all of the expected shapes with single knowledge. At last we show the results of implementing a rough 3D image segmentation and visualization system. This paper presents a method which uses multiple types of expert knowledge together in 3D medical image segmentation based on rough set theory. The focus of this paper is how to approximate a ROI(region of interest) when there are multiple types of expert knowledge. Based on rough set theory, the image can be split into three regions: positive regions; negative regions; boundary regions. With multiple knowledge we refine ROI as an intersection of all of the expected shapes with single knowledge. At last we show the results of implementing a rough 3D image segmentation and visualization system.
出处 《Chinese Journal of Biomedical Engineering(English Edition)》 2007年第1期39-46,共8页 中国生物医学工程学报(英文版)
基金 PHD Site from Chinese Educational Department,Grant number:20040699015
关键词 三维医学图象 图象分割 粗糙集理论 ROI 可视化 3D medical image Segmentation Rough set
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