On computing aspect graphs of smooth shapes from volumetric data

J. Noble, D. L. Wilson, J. Ponce
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引用次数: 11

Abstract

The authors address the problem of computing the aspect graph of an object from volumetric image data, with applications in medical image analysis and interpretation. Anatomical surfaces are assumed to be smooth and are identified as the zero set of a three-dimensional density function (e.g., a CT, MR, or ultrasound image). The orthographic-projection aspect graph is constructed by partitioning the view sphere at infinity into maximal regions bounded by visual event curves. These events are the intersections of the view sphere with surfaces ruled by singular tangent lines that graze the object's surface along a set of critical curves. For each visual event the proposed algorithm constructs a new density function from the original one and its derivatives, and computes the corresponding critical curve as the intersection of the object's surface with the zero set of the new density function. Once the critical curves have been traced, the regions of the sphere delineated by the corresponding visual events are constructed through cell decomposition, and a representative aspect is constructed for each region by computing the occluding contour for a sample viewing direction. A preliminary implementation of the proposed approach has been constructed and experiments with synthetic data and real medical data are presented. Extensions to the sectional imaging case are also discussed.
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从体积数据计算光滑形状的方面图
作者解决了从体图像数据中计算物体的方面图的问题,并在医学图像分析和解释中应用。解剖表面假定是光滑的,并被识别为三维密度函数(例如,CT, MR或超声图像)的零集。通过在无限远处将视球划分为以视觉事件曲线为界的最大区域来构造正射影方面图。这些事件是视场与由奇异切线控制的表面的交点,这些切线沿着一组临界曲线掠过物体表面。对于每个视觉事件,该算法由原密度函数及其导数构造一个新的密度函数,并计算出相应的临界曲线作为目标表面与新密度函数零集的交点。一旦追踪到关键曲线,通过细胞分解构建相应视觉事件所描绘的球体区域,并通过计算样本观察方向的遮挡轮廓为每个区域构建一个代表性方面。本文构建了该方法的初步实现,并对合成数据和真实医疗数据进行了实验。扩展到断层成像的情况下也进行了讨论。
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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