Segmentation-free skeletonization of grayscale volumes for shape understanding

S. S. Abeysinghe, M. Baker, W. Chiu, T. Ju
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引用次数: 43

Abstract

Medical imaging has produced a large number of volumetric images capturing biological structures in 3D. Computer-based understanding of these structures can often benefit from the knowledge of shape components, particularly rod-like and plate-like parts, in such volumes. Previously, skeletons have been a common tool for identifying these shape components in a solid object. However, obtaining skeletons of a grayscale volume poses new challenges due to the lack of a clear boundary between object and background. In this paper, we present a new skeletonization algorithm on grayscale volumes typical to medical imaging (e.g., MRI, CT and EM scans), for the purpose of identifying shape components. Our algorithm does not require an explicit segmentation of the volume into object and background, and is capable of producing skeletal curves and surfaces that lie centered at rod-shaped and plate-shaped parts in the grayscale volume. Our method is demonstrated on both synthetic and medical data.
用于形状理解的灰度体积的无分割骨架化
医学成像已经产生了大量三维生物结构的体积图像。基于计算机的对这些结构的理解通常可以从形状部件的知识中受益,特别是棒状和板状部件,在这种体积中。以前,骨架一直是识别固体物体中这些形状成分的常用工具。然而,由于物体和背景之间缺乏清晰的边界,获得灰度体的骨架提出了新的挑战。在本文中,我们提出了一种新的针对医学成像(例如MRI, CT和EM扫描)的灰度体积的骨架化算法,以识别形状成分。我们的算法不需要将体积明确分割为对象和背景,并且能够在灰度体积中产生以杆状和板状部分为中心的骨架曲线和表面。我们的方法在合成数据和医学数据上都得到了验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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