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Variational methods for shape and image registrations.

机译:形状和图像配准的各种方法。

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One of most important image analysis tools that greatly benefits from the process of registration, and which will be addressed in this dissertation, is the image segmentation.; This dissertation addresses the registration problem from a variational point of view, with more focus on shape registration.; First, a novel variational framework for global-to-local shape registration is proposed. The input shapes are implicitly represented through their signed distance maps. A new Sum-of-Squared-Differences (SSD) criterion which measures the disparity between the implicit representations of the input shapes, is introduced to recover the global alignment parameters. This new criteria has the advantages over some existing ones in accurately handling scale variations. In addition, the proposed alignment model is less expensive computationally. Complementary to the global registration field, the local deformation field is explicitly established between the two globally aligned shapes, by minimizing a new energy functional. This functional incrementally and simultaneously updates the displacement field while keeping the corresponding implicit representation of the globally warped source shape as close to a signed distance function as possible. This is done under some regularization constraints that enforce the smoothness of the recovered deformations. The overall process leads to a set of coupled set of equations that are simultaneously solved through a gradient descent scheme. Several applications, where the developed tools play a major role, are addressed throughout this dissertation. For instance, some insight is given as to how one can solve the challenging problem of three dimensional face recognition in the presence of facial expressions. Statistical modelling of shapes will be presented as a way of benefiting from the proposed shape registration framework.; Second, this dissertation will visit the shape-based segmentation problem. The piece-wise constant Chan and Vese segmentation models [1] are chosen as the underlying segmentation models and it will be shown how the proposed global shape registration technique can serve in enhancing the segmentation results of an input image when some prior knowledge of shapes is integrated in the underlying segmentation framework. The resulting paradigm allows the recovery of a segmentation map that is in accordance with the shape prior model as well as an affine transformation between this map and the model. Furthermore, it can deal with noisy, occluded and missing or corrupted data. The classical way of solving the shape-based segmentation problems within a level set framework is by directly solving the underlying Euler-Lagrange equations using a gradient descent scheme. This is very computationally expensive given the non-linear parabolic nature of the corresponding PDE's. To overcome these difficulties, a fast algorithm is designed and implemented to solve both the two-phase and the multi-phase shape-based segmentation problem. This algorithm exploits the fact that only the sign of the level set function, not its value, is needed to evolve the segmenting interface. The integration of multiple selective shape priors and the segmentation into multiple regions has never been addressed before.; Third, a new image/volume non-rigid registration approach based on scale space and level set theories, will be introduced. This contribution is the fruit of a collaborative effort with two other members of the CVIP Lab. New feature descriptors are built as voxel signatures using scale space theory. These descriptors are used to capture the global motion of the imaged object. Local deformations are modelled through an evolution process of equi-spaced closed curves/surfaces (iso-contours/surfaces) which are generated using fast marching level sets and are matched based on a cross correlation measure between neighboring voxels.; A novel Finite Element (FE)-based approach is developed to validate the perform
机译:图像分割是从配准过程中受益匪浅的最重要的图像分析工具之一,本文将对此进行介绍。本文从变体的角度解决了配准问题,重点是形状配准。首先,提出了用于全局到局部形状配准的新颖变体框架。输入形状通过其带符号的距离图隐式表示。引入了一种新的平方和差(SSD)准则,该准则用于测量输入形状的隐式表示之间的差异,以恢复全局对齐参数。在精确处理比例尺变化方面,该新标准具有优于某些现有标准的优势。另外,所提出的对准模型在计算上较便宜。与全局配准场互补的是,通过最小化新的能量函数,在两个全局对齐的形状之间显式建立了局部变形场。该功能递增并同时更新位移场,同时使全局变形源形状的对应隐式表示尽可能接近带符号的距离函数。这是在某些规整化约束下完成的,这些约束强制了恢复的变形的平滑性。整个过程导致了一组耦合的方程组,这些方程组通过梯度下降方案同时求解。本文通篇讨论了其中开发工具起主要作用的几种应用。例如,对于在面部表情存在的情况下如何解决三维人脸识别这一具有挑战性的问题给出了一些见解。形状的统计建模将作为从提议的形状注册框架中受益的一种方式呈现。其次,本文将探讨基于形状的分割问题。选择分段常数Chan和Vese分割模型[1]作为基础分割模型,这将说明当形状的某些先验知识得到支持时,所提出的全局形状配准技术如何用于增强输入图像的分割结果。集成在基础细分框架中。产生的范例允许恢复符合形状先验模型的分割图,以及该图与模型之间的仿射变换。此外,它可以处理嘈杂,阻塞,丢失或损坏的数据。解决在水平集框架内基于形状的分割问题的经典方法是通过使用梯度下降方案直接求解基础的Euler-Lagrange方程。考虑到相应PDE的非线性抛物线性质,这在计算上非常昂贵。为了克服这些困难,设计并实现了一种快速算法来解决基于两相和基于多相形状的分割问题。该算法利用了这样一个事实,即只需要水平集函数的符号而不是它的值即可生成分段接口。以前,从未讨论过将多个选择性形状先验和分割成多个区域的方法。第三,将介绍一种新的基于比例空间和水平集理论的图像/体积非刚性配准方法。这项贡献是与CVIP实验室的其他两个成员共同努力的成果。使用比例空间理论将新的特征描述符构建为体素签名。这些描述符用于捕获成像对象的整体运动。通过等距闭合曲线/曲面(等值线/曲面)的演化过程对局部变形进行建模,这些曲线/曲面使用快速行进水平集生成,并基于相邻体素之间的互相关度量进行匹配。开发了一种新颖的基于有限元(FE)的方法来验证性能

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