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Hierarchical active shape models, using the wavelet transform.使用小波变换的分层主动形状模型。
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Automatic construction of multiple-object three-dimensional statistical shape models: application to cardiac modeling.多目标三维统计形状模型的自动构建:在心脏建模中的应用。
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使用分层形状先验和可变形模型对啮齿动物脑结构进行三维分割。

3D segmentation of rodent brain structures using hierarchical shape priors and deformable models.

作者信息

Zhang Shaoting, Huang Junzhou, Uzunbas Mustafa, Shen Tian, Delis Foteini, Huang Xiaolei, Volkow Nora, Thanos Panayotis, Metaxas Dimitris N

机构信息

CBIM, Rutgers, The State University of New Jersey, Piscataway, NJ, USA.

出版信息

Med Image Comput Comput Assist Interv. 2011;14(Pt 3):611-8. doi: 10.1007/978-3-642-23626-6_75.

DOI:10.1007/978-3-642-23626-6_75
PMID:22003750
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC4827427/
Abstract

In this paper, we propose a method to segment multiple rodent brain structures simultaneously. This method combines deformable models and hierarchical shape priors within one framework. The deformation module employs both gradient and appearance information to generate image forces to deform the shape. The shape prior module uses Principal Component Analysis to hierarchically model the multiple structures at both global and local levels. At the global level, the statistics of relative positions among different structures are modeled. At the local level, the shape statistics within each structure is learned from training samples. Our segmentation method adaptively employs both priors to constrain the intermediate deformation result. This prior constraint improves the robustness of the model and benefits the segmentation accuracy. Another merit of our prior module is that the size of the training data can be small, because the shape prior module models each structure individually and combines them using global statistics. This scheme can preserve shape details better than directly applying PCA on all structures. We use this method to segment rodent brain structures, such as the cerebellum, the left and right striatum, and the left and right hippocampus. The experiments show that our method works effectively and this hierarchical prior improves the segmentation performance.

摘要

在本文中,我们提出了一种同时分割多个啮齿动物脑结构的方法。该方法将可变形模型和分层形状先验结合在一个框架内。变形模块利用梯度信息和外观信息来生成图像力以使形状变形。形状先验模块使用主成分分析在全局和局部层面上对多个结构进行分层建模。在全局层面,对不同结构之间的相对位置统计进行建模。在局部层面,从训练样本中学习每个结构内的形状统计信息。我们的分割方法自适应地利用这两种先验来约束中间变形结果。这种先验约束提高了模型的鲁棒性并有助于提高分割精度。我们先验模块的另一个优点是训练数据的规模可以较小,因为形状先验模块分别对每个结构进行建模,并使用全局统计信息将它们组合起来。与直接对所有结构应用主成分分析相比,这种方案能够更好地保留形状细节。我们使用这种方法来分割啮齿动物的脑结构,如小脑、左右纹状体以及左右海马体。实验表明我们的方法有效,并且这种分层先验提高了分割性能。