多非均匀体数据集的水平集分割

K. Museth, D. Breen, L. Zhukov, R. Whitaker
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引用次数: 29

摘要

通常,3-D MR和CT扫描在扫描X-Y平面上具有相对较高的分辨率,但在轴向Z方向上分辨率要低得多。这种对物体的不均匀采样可能会遗漏小的或薄的结构。解决这个问题的一种方法是从多个方向扫描同一个对象。在本文中,我们描述了一种利用来自非均匀分辨率的多个体数据集的速度信息来变形水平集模型的方法,以产生一个单一的高分辨率3D模型。该方法通过使用移动最小二乘拟合距离加权多项式来局部逼近多个数据集的值。该方法具有以下几个优点:计算成本与目标表面积成正比;相对于噪声、不完美配准和数据突变而言,它是稳定的;它提供增益校正;它采用基于距离的加权来确保每次扫描的贡献正确地合并到最终结果中。我们已经证明了我们的方法在四个多扫描数据集上的有效性,一个格里芬激光扫描重建,一个茶壶的CT扫描和一个老鼠胚胎和一个西葫芦的MR扫描。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Level set segmentation from multiple non-uniform volume datasets
Typically 3-D MR and CT scans have a relatively high resolution in the scanning X-Y plane, but much lower resolution in the axial Z direction. This non-uniform sampling of an object can miss small or thin structures. One way to address this problem is to scan the same object from multiple directions. In this paper we describe a method for deforming a level set model using velocity information derived from multiple volume datasets with non-uniform resolution in order to produce a single high-resolution 3D model. The method locally approximates the values of the multiple datasets by fitting a distance-weighted polynomial using moving least-squares. The proposed method has several advantageous properties: its computational cost is proportional to the object surface area, it is stable with respect to noise, imperfect registrations and abrupt changes in the data, it provides gain-correction, and it employs a distance-based weighting to ensures that the contributions from each scan are properly merged into the final result. We have demonstrated the effectiveness of our approach on four multi-scan datasets, a Griffin laser scan reconstruction, a CT scan of a teapot and MR scans of a mouse embryo and a zucchini.
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