基于张量场的特征赋值点集可变形配准。

Demian Wassermann, James Ross, George Washko, William M Wells, Raul San Jose-Estepar
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引用次数: 4

摘要

这项工作的主要贡献是一个框架,以注册解剖结构为特征的点集,其中每个点都有一个相关的对称矩阵。这些矩阵可以表示注册结构的与问题相关的特征。例如,在气道中,矩阵可以表示结构的方向和厚度。我们的框架依赖于密集张量场表示,我们将其稀疏地实现为张量场的核混合。我们给张量场的空间配备一个范数作为相似度度量。为了计算两个结构之间的最优转换,我们使用相似性度量和变形场的解析梯度来最小化该度量,我们将其限制为微分同态。我们通过将我们的结果与基于标量和矢量场的模型进行比较来说明我们的张量场模型的价值。最后,我们在合成数据集上评估了我们的配准算法,并在手动注释的气道树上验证了我们的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Deformable Registration of Feature-Endowed Point Sets Based on Tensor Fields.

Deformable Registration of Feature-Endowed Point Sets Based on Tensor Fields.

Deformable Registration of Feature-Endowed Point Sets Based on Tensor Fields.

Deformable Registration of Feature-Endowed Point Sets Based on Tensor Fields.
The main contribution of this work is a framework to register anatomical structures characterized as a point set where each point has an associated symmetric matrix. These matrices can represent problem-dependent characteristics of the registered structure. For example, in airways, matrices can represent the orientation and thickness of the structure. Our framework relies on a dense tensor field representation which we implement sparsely as a kernel mixture of tensor fields. We equip the space of tensor fields with a norm that serves as a similarity measure. To calculate the optimal transformation between two structures we minimize this measure using an analytical gradient for the similarity measure and the deformation field, which we restrict to be a diffeomorphism. We illustrate the value of our tensor field model by comparing our results with scalar and vector field based models. Finally, we evaluate our registration algorithm on synthetic data sets and validate our approach on manually annotated airway trees.
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CiteScore
43.50
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