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Learning Deep Features for Automated Placement of Correspondence Points on Ensembles of Complex Shapes

机译:学习复杂形状集合的对应点自动放置的深度特征

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Correspondence-based shape models are an enabling technology for various medical imaging applications that rely on statistical analysis of populations of anatomical shape. One strategy for automatic correspondence placement is to simultaneously learn a compact representation of the underlying anatomical variation in the shape space while capturing the geometric characteristics of individual shapes. The inherent geometric complexity and population-level shape variation in anatomical structures introduce significant challenges in finding optimal shape correspondence models. Existing approaches adopt iterative optimization schemes with objective functions derived from probabilistic modeling of shape space, e.g. entropy of Gaussian-distributed shape space, to find useful sets of dense correspondence on shape ensembles. Nonetheless, anatomical shape distributions can be far more complex than this Gaussian assumption, which entails linear shape variation. Recent works address this limitation by adopting an application-specific notion of correspondence through lifting positional data to a higher-dimensional feature space (e.g. sulcal depth, brain connectivity, and geodesic distance to anatomical landmarks), with the goal of simplifying the optimization problem. However, this typically requires a careful selection of hand-crafted features and their success heavily rely on expertise in finding such features consistently. This paper proposes an automated feature learning approach using deep convolutional neural networks for optimization of dense point correspondence on shape ensembles. The proposed method endows anatomical shapes with learned features that enhance the shape correspondence objective function to deal with complex objects and populations. Results demonstrate that deep learning based features perform better than methods that rely on position and compete favorably with hand-crafted features.
机译:基于对应的形状模型是各种医学成像应用的能力技术,其依赖于解剖形状的群体统计分析。自动对应位置的一个策略是同时学习形状空间的底层解剖变化的紧凑表示,同时捕获各个形状的几何特征。解剖结构中固有的几何复杂性和人口级形状变化在寻找最佳形状对应模型时引入了重大挑战。现有方法采用迭代优化方案,其具有源自形状空间的概率模型的客观函数,例如,高斯分布式形状空间的熵,在形状集合上找到有用的密集信件。尽管如此,解剖形状分布可能比这种高斯假设更复杂,这需要线性形状变化。最近的作品通过采用通过将位置数据提升到高维特征空间(例如硫的深度,脑连接和测压地标的测地距离)来解决这种限制,以简化优化问题。然而,这通常需要仔细选择手工制作的特征及其成功,严重依赖于始终如一地找到这些特征的专业知识。本文提出了一种自动特征学习方法,使用深卷积神经网络来优化形状集合的密度对应。所提出的方法赋予了具有学习特征的解剖结构,从而增强了形状对应目标函数来处理复杂的对象和群体。结果表明,基于深度的学习功能比依赖位置的方法更好,并用手工制作的功能竞争。

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