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一种用于从超声图像中提取腔边界的交互式多模型概率数据关联滤波器。

An interacting multiple model probabilistic data association filter for cavity boundary extraction from ultrasound images.

作者信息

Abolmaesumi P, Sirouspour M R

机构信息

School of Computing, Queen's University, Kingston, ON K7L 3N6, Canada.

出版信息

IEEE Trans Med Imaging. 2004 Jun;23(6):772-84. doi: 10.1109/tmi.2004.826954.

Abstract

This paper presents a novel segmentation technique for extracting cavity contours from ultrasound images. The problem is first discretized by projecting equispaced radii from an arbitrary seed point inside the cavity toward its boundary. The distance of the cavity boundary from the seed point is modeled by the trajectory of a moving object. The motion of this moving object is assumed to be governed by a finite set of dynamical models subject to uncertainty. Candidate edge points obtained along each radius include the measurement of the object position and some false returns. The modeling approach enables us to use the interacting multiple model estimator along with a probabilistic data association filter, for contour extraction. The convergence rate of the method is very fast because it does not employ any numerical optimization. The robustness and accuracy of the method are demonstrated by segmenting contours from a series of ultrasound images. The results are validated through comparison with manual segmentations performed by an expert. An application of the method in segmenting bone contours from computed tomography images is also presented.

摘要

本文提出了一种从超声图像中提取腔轮廓的新型分割技术。首先通过从腔内任意种子点向其边界投射等间距半径来离散该问题。腔边界到种子点的距离由一个移动物体的轨迹建模。假定此移动物体的运动受一组有限的、存在不确定性的动力学模型支配。沿每个半径获得的候选边缘点包括物体位置的测量值和一些错误返回值。该建模方法使我们能够使用交互式多模型估计器以及概率数据关联滤波器来进行轮廓提取。该方法的收敛速度非常快,因为它不采用任何数值优化。通过对一系列超声图像进行轮廓分割,证明了该方法的稳健性和准确性。通过与专家进行的手动分割结果相比较,验证了这些结果。还介绍了该方法在从计算机断层扫描图像中分割骨轮廓方面的应用。

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