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首页> 外文期刊>Journal of mathematical imaging and vision >String Methods for Stochastic Image and Shape Matching
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String Methods for Stochastic Image and Shape Matching

机译:随机图像和形状匹配的字符串方法

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摘要

Matching of images and analysis of shape differences is traditionally pursued by energy minimization of paths of deformations acting to match the shape objects. In the large deformation diffeomorphic metric mapping (LDDMM) framework, iterative gradient descents on the matching functional lead to matching algorithms informally known as Beg algorithms. When stochasticity is introduced to model stochastic variability of shapes and to provide more realistic models of observed shape data, the corresponding matching problem can be solved with a stochastic Beg algorithm, similar to the finite-temperature string method used in rare event sampling. In this paper, we apply a stochastic model compatible with the geometry of the LDDMM framework to obtain a stochastic model of images and we derive the stochastic version of the Beg algorithm which we compare with the string method and an expectation-maximization optimization of posterior likelihoods. The algorithm and its use for statistical inference is tested on stochastic LDDMM landmarks and images.
机译:图像和形状差异的匹配传统上是通过作用以匹配形状物体的变形路径的​​能量最小化。在大变形漫射型群体映射(LDDMM)框架中,匹配功能的迭代梯度降差导致匹配算法非正式地称为Beg算法。当引入时剧性以模拟形状的随机变换和提供更现实的观察形状数据的实际模型时,可以用随机乞讨算法来解决相应的匹配问题,类似于罕见事件采样中使用的有限温度串方法。在本文中,我们应用了与LDDMM框架的几何形状兼容的随机模型,以获取类似于图像的随机模型,我们推导了与字符串方法的乞讨算法的随机版本和后期似然的期望最大化优化。在随机LDDMM地标和图像上测试了算法及其对统计推理的用途。

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