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1996 | Buch

The Statistical Theory of Shape

verfasst von: Christopher G. Small

Verlag: Springer New York

Buchreihe : Springer Series in Statistics

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Über dieses Buch

In general terms, the shape of an object, data set, or image can be de­ fined as the total of all information that is invariant under translations, rotations, and isotropic rescalings. Thus two objects can be said to have the same shape if they are similar in the sense of Euclidean geometry. For example, all equilateral triangles have the same shape, and so do all cubes. In applications, bodies rarely have exactly the same shape within measure­ ment error. In such cases the variation in shape can often be the subject of statistical analysis. The last decade has seen a considerable growth in interest in the statis­ tical theory of shape. This has been the result of a synthesis of a number of different areas and a recognition that there is considerable common ground among these areas in their study of shape variation. Despite this synthesis of disciplines, there are several different schools of statistical shape analysis. One of these, the Kendall school of shape analysis, uses a variety of mathe­ matical tools from differential geometry and probability, and is the subject of this book. The book does not assume a particularly strong background by the reader in these subjects, and so a brief introduction is provided to each of these topics. Anyone who is unfamiliar with this material is advised to consult a more complete reference. As the literature on these subjects is vast, the introductory sections can be used as a brief guide to the literature.

Inhaltsverzeichnis

Frontmatter
1. Introduction
Abstract
In 1977, David Kendall published a brief note [87] in which he introduced a new representation of shapes as elements of complex projective spaces. The result stated in the paper was unusual: under an appropriate random clock, the shape of a set of independent particles diffusing according to a Brownian motion law could be regarded as a Brownian motion on complex projective space. Many statisticians, who knew little about complex projective spaces and who did not work on diffusion processes, did not see immediate applications to their own work. However, in a sequence of talks at conferences around the world, David Kendall continued to expound on his theory, with some applications to problems in archeology. Presented with great clarity and with excellent graphics, these talks gradually generated wider interest. It was not until 1984 that the full details of the theory were published [90]. At that point it became clear that Kendall’s theory of shape was of great elegance and contained some interesting areas of research for both the probabilist and the statistician.
Christopher G. Small
2. Background Concepts and Definitions
Abstract
In this section, we shall begin with some preliminary definitions relevant to shape analysis.
Christopher G. Small
3. Shape Spaces
Abstract
In this and the next two sections, we shall develop a geometric theory of shape due to Kendall [90].
Christopher G. Small
4. Some Stochastic Geometry
Abstract
We begin with a review of some basic definitions and ideas from probability theory. The reader wishing a more detailed description of the tools that will be necessary can consult [43].
Christopher G. Small
5. Distributions of Random Shapes
Abstract
We are now in a position to state and prove a central result, due to Kendall [90], for the induced distribution of the shapes of planar landmarks generated by an IID spherical normal model.
Christopher G. Small
6. Some Examples of Shape Analysis
Abstract
In this chapter, we shall consider in greater detail some examples that were first mentioned in Chapter 1. While the Land’s End data of Chapter 5 were accessible to analysis largely by shape theory alone, most spatial data sets contain scale and orientation information that should not be ignored. In many cases, a shape analysis is performed in order to find the relationship between size and shape. This is of interest in growth allometry, as was mentioned in Chapter 1. However, the relationship between size and shape is of interest more generally, as is evident in the dinosaur footprints example described in Section 6.2 below.
Christopher G. Small
Backmatter
Metadaten
Titel
The Statistical Theory of Shape
verfasst von
Christopher G. Small
Copyright-Jahr
1996
Verlag
Springer New York
Electronic ISBN
978-1-4612-4032-7
Print ISBN
978-1-4612-8473-4
DOI
https://doi.org/10.1007/978-1-4612-4032-7