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Recalage déformable à base de graphes : mise en correspondance coupe-vers-volume et méthodes contextuelles

机译:可变形的基于图形的配准:按比例绘制映射和上下文方法

摘要

Image registration methods, which aim at aligning two or more images into one coordinate system, are among the oldest and most widely used algorithms in computer vision. Registration methods serve to establish correspondence relationships among images (captured at different times, from different sensors or from different viewpoints) which are not obvious for the human eye. A particular type of registration algorithm, known as graph-based deformable registration methods, has become popular during the last decade given its robustness, scalability, efficiency and theoretical simplicity. The range of problems to which it can be adapted is particularly broad. In this thesis, we propose several extensions to the graph-based deformable registration theory, by exploring new application scenarios and developing novel methodological contributions.Our first contribution is an extension of the graph-based deformable registration framework, dealing with the challenging slice-to-volume registration problem. Slice-to-volume registration aims at registering a 2D image within a 3D volume, i.e. we seek a mapping function which optimally maps a tomographic slice to the 3D coordinate space of a given volume. We introduce a scalable, modular and flexible formulation accommodating low-rank and high order terms, which simultaneously selects the plane and estimates the in-plane deformation through a single shot optimization approach. The proposed framework is instantiated into different variants based on different graph topology, label space definition and energy construction. Simulated and real-data in the context of ultrasound and magnetic resonance registration (where both framework instantiations as well as different optimization strategies are considered) demonstrate the potentials of our method.The other two contributions included in this thesis are related to how semantic information can be encompassed within the registration process (independently of the dimensionality of the images). Currently, most of the methods rely on a single metric function explaining the similarity between the source and target images. We argue that incorporating semantic information to guide the registration process will further improve the accuracy of the results, particularly in the presence of semantic labels making the registration a domain specific problem.We consider a first scenario where we are given a classifier inferring probability maps for different anatomical structures in the input images. Our method seeks to simultaneously register and segment a set of input images, incorporating this information within the energy formulation. The main idea is to use these estimated maps of semantic labels (provided by an arbitrary classifier) as a surrogate for unlabeled data, and combine them with population deformable registration to improve both alignment and segmentation.Our last contribution also aims at incorporating semantic information to the registration process, but in a different scenario. In this case, instead of supposing that we have pre-trained arbitrary classifiers at our disposal, we are given a set of accurate ground truth annotations for a variety of anatomical structures. We present a methodological contribution that aims at learning context specific matching criteria as an aggregation of standard similarity measures from the aforementioned annotated data, using an adapted version of the latent structured support vector machine (LSSVM) framework.
机译:旨在将两个或多个图像对准一个坐标系的图像配准方法是计算机视觉中最古老,使用最广泛的算法之一。配准方法用于在人眼不明显的图像之间建立对应关系(在不同时间从不同的传感器或从不同的角度捕获)。鉴于其鲁棒性,可伸缩性,效率和理论简单性,在过去的十年中,一种特殊类型的配准算法(称为基于图的可变形配准方法)已变得流行。它可以适应的问题范围特别广泛。在本文中,我们通过探索新的应用场景并开发新的方法论方法,提出了对基于图的可变形配准理论的几种扩展。我们的第一个贡献是对基于图的可变形配准框架的扩展,处理了具有挑战性的切片。批量注册问题。切片到体积的配准旨在将3D体积内的2D图像配准,即我们寻求一种映射功能,该功能可以将断层摄影切片最佳地映射到给定体积的3D坐标空间。我们引入了可伸缩的,模块化的和灵活的公式,以适应低阶和高阶项,它可以同时选择平面并通过单次射击优化方法来估计平面内变形。根据不同的图拓扑,标签空间定义和能量构造,将提出的框架实例化为不同的变体。在超声和磁共振配准的情况下(其中考虑了框架实例化以及不同的优化策略)的模拟和真实数据证明了我们方法的潜力。本文中的其他两个贡献与语义信息如何能够获得相关性。包含在配准过程中(与图像的尺寸无关)。当前,大多数方法都依靠单个度量函数来解释源图像和目标图像之间的相似性。我们认为,结合语义信息来指导注册过程将进一步提高结果的准确性,特别是在存在语义标签的情况下,使注册成为特定于领域的问题。我们考虑第一种情况,即为我们提供了一个分类器来推断概率图输入图像中的不同解剖结构。我们的方法试图同时注册和分割一组输入图像,并将此信息纳入能量公式。主要思想是将这些估计的语义标签图(由任意分类器提供)用作未标记数据的替代物,并将它们与总体可变形配准相结合以改善对齐方式和分割效果。注册过程,但情况不同。在这种情况下,我们可以假设我们为各种解剖结构提供了一组准确的地面真相注释,而不是假设我们已经预先训练了任意分类器。我们提出了一种方法学的贡献,目的是使用潜在结构化支持向量机(LSSVM)框架的改编版,从上述注释数据中学习特定于上下文的匹配标准,作为标准相似性度量的集合。

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    Ferrante Enzo;

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  • 年度 2016
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  • 原文格式 PDF
  • 正文语种 en
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