基于非刚性形状的配准统计模型和神经网络模型的性能评价

A. Psarrou, A. Angelopoulou, M. Mentzelopoulos, J. G. Rodríguez
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引用次数: 0

摘要

基于形状的配准方法在计算机视觉、图像处理和医学成像等领域经常遇到。配准问题是在刚体和非刚体之间寻找最优的变换/映射,并自动求解对应关系。在本文中,我们提出了两种不同的概率方法,熵和增长神经气体网络(GNG),作为一般的基于特征的配准算法的比较。使用熵形状建模是通过连接具有最高曲率信息概率的点集来执行的,而使用GNG,点集是使用来自竞争hebbian学习的最近邻关系来连接的。为了比较表现,我们使用不同程度的形状变形,从简单的二维MRI脑室形状开始,到更复杂的形状,如手。给出了两组的定量和定性结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance evaluation of a statistical and a neural network model for nonrigid shape-based registration
Shape-based registration methods frequently encounters in the domains of computer vision, image processing and medical imaging. The registration problem is to find an optimal transformation/mapping between sets of rigid or non-rigid objects and to automatically solve for correspondences. In this paper we present a comparison of two different probabilistic methods, the entropy and the growing neural gas network (GNG), as general feature-based registration algorithms. Using entropy shape modelling is performed by connecting the point sets with the highest probability of curvature information, while with GNG the points sets are connected using nearest-neighbour relationships derived from competitive hebbian learning. In order to compare performances we use different levels of shape deformation starting with a simple shape 2D MRI brain ventricles and moving to more complicated shapes like hands. Results both quantitatively and qualitatively are given for both sets.
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