Analysis of shape data: From landmarks to elastic curves.

IF 4.4 2区 数学 Q1 STATISTICS & PROBABILITY Wiley Interdisciplinary Reviews-Computational Statistics Pub Date : 2020-05-01 Epub Date: 2020-01-17 DOI:10.1002/wics.1495
Karthik Bharath, Sebastian Kurtek
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引用次数: 0

Abstract

Proliferation of high-resolution imaging data in recent years has led to sub-stantial improvements in the two popular approaches for analyzing shapes of data objects based on landmarks and/or continuous curves. We provide an expository account of elastic shape analysis of parametric planar curves representing shapes of two-dimensional (2D) objects by discussing its differences, and its commonalities, to the landmark-based approach. Particular attention is accorded to the role of reparameterization of a curve, which in addition to rotation, scaling and translation, represents an important shape-preserving transformation of a curve. The transition to the curve-based approach moves the mathematical setting of shape analysis from finite-dimensional non-Euclidean spaces to infinite-dimensional ones. We discuss some of the challenges associated with the infinite-dimensionality of the shape space, and illustrate the use of geometry-based methods in the computation of intrinsic statistical summaries and in the definition of statistical models on a 2D imaging dataset consisting of mouse vertebrae. We conclude with an overview of the current state-of-the-art in the field.

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形状数据分析:从地标到弹性曲线
近年来,高分辨率成像数据的激增使得基于地标和/或连续曲线分析数据对象形状的两种流行方法有了质的飞跃。我们对代表二维(2D)物体形状的参数平面曲线的弹性形状分析进行了阐述,讨论了它与基于地标的方法的区别和共同点。除了旋转、缩放和平移之外,曲线的重参数化也是曲线形状保持的重要变换。向基于曲线的方法过渡,使形状分析的数学环境从有限维非欧几里得空间转向无限维空间。我们讨论了与形状空间的无穷维性相关的一些挑战,并举例说明了在计算内在统计摘要和定义由小鼠椎骨组成的二维成像数据集的统计模型时如何使用基于几何的方法。最后,我们将概述该领域的最新进展。
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CiteScore
6.20
自引率
0.00%
发文量
31
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