Stochastic geometry : modern research frontiers
Author(s)
Bibliographic Information
Stochastic geometry : modern research frontiers
(Lecture notes in mathematics, 2237)
Springer, c2019
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CEMPI subseries
Available at / 36 libraries
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Library, Research Institute for Mathematical Sciences, Kyoto University数研
L/N||LNM||2237200039108912
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Note
"CEMPI Centre Européen pour les Mathématiques, la Physique et leurs interactions"--Facing title page
"This is the third volume of the "CEMPI subseries" common to Lecture notes in mathematics and Lecture notes in Physics."--P. v
Includes bibliographical references
Description and Table of Contents
Description
This volume offers a unique and accessible overview of the most active fields in Stochastic Geometry, up to the frontiers of recent research.
Since 2014, the yearly meeting of the French research structure GDR GeoSto has been preceded by two introductory courses. This book contains five of these introductory lectures.
The first chapter is a historically motivated introduction to Stochastic Geometry which relates four classical problems (the Buffon needle problem, the Bertrand paradox, the Sylvester four-point problem and the bicycle wheel problem) to current topics. The remaining chapters give an application motivated introduction to contemporary Stochastic Geometry, each one devoted to a particular branch of the subject: understanding spatial point patterns through intensity and conditional intensities; stochastic methods for image analysis; random fields and scale invariance; and the theory of Gibbs point processes.
Exposing readers to a rich theory, this book will encourage further exploration of the subject and its wide applications.
Table of Contents
- Some Classical Problems in Random Geometry. - Understanding Spatial Point Patterns Through Intensity and Conditional Intensities. - Stochastic Methods for Image Analysis. - Introduction to Random Fields and Scale Invariance. - Introduction to the Theory of Gibbs Point Processes.
by "Nielsen BookData"