Pattern Theory

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A01=Agnes Desolneux
A01=David Mumford
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Agnes Desolneux
Author_Agnes Desolneux
Author_David Mumford
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bayesian probability
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chain
Convoluted neural networks
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David Mumford
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Differential Entropy
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Equilibrium Probability Distribution
Finite Dimensional Manifolds
Geometry
hidden
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Ising Model
Kullback Leibler Distance
Landmark Points
Language_English
Laplacian Pyramid
Lie Algebra
Lie Group
markov
Markov Chain
Medial Axis
model
modeling geometric variations
models
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Parse Graph
Parse Tree
pattern analysis
Pattern Perception
Pattern Theory
PCFGs
Poisson Process
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random
recognition
Region Ri
Riemannian Metric
Smooth Diffeomorphisms
softlaunch
statistical
Statistical Pattern Recognition
stochastic
Tangent Space
texture synthesis
variable
Voronoi Decomposition
Windowed Fourier Transform

Product details

  • ISBN 9781032920054
  • Weight: 675g
  • Dimensions: 152 x 229mm
  • Publication Date: 14 Oct 2024
  • Publisher: Taylor & Francis Ltd
  • Publication City/Country: GB
  • Product Form: Paperback
  • Language: English
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Pattern theory is a distinctive approach to the analysis of all forms of real-world signals. At its core is the design of a large variety of probabilistic models whose samples reproduce the look and feel of the real signals, their patterns, and their variability. Bayesian statistical inference then allows you to apply these models in the analysis of new signals.

This book treats the mathematical tools, the models themselves, and the computational algorithms for applying statistics to analyze six representative classes of signals of increasing complexity. The book covers patterns in text, sound, and images. Discussions of images include recognizing characters, textures, nature scenes, and human faces. The text includes online access to the materials (data, code, etc.) needed for the exercises.

David Mumford is a professor emeritus of applied mathematics at Brown University. His contributions to mathematics fundamentally changed algebraic geometry, including his development of geometric invariant theory and his study of the moduli space of curves. In addition, Dr. Mumford’s work in computer vision and pattern theory introduced new mathematical tools and models from analysis and differential geometry. He has been the recipient of many prestigious awards, including U.S. National Medal of Science (2010), the Wolf Foundation Prize in Mathematics (2008), the Steele Prize for Mathematical Exposition (2007), the Shaw Prize in Mathematical Sciences (2006), a MacArthur Foundation Fellowship (1987-1992), and the Fields Medal (1974).

Agnès Desolneux is a researcher at CNRS/Université Paris Descartes. A former student of David Mumford’s, she earned her Ph.D. in applied mathematics from CMLA, ENS Cachan. Dr. Desolneux’s research interests include statistical image analysis, Gestalt theory, mathematical modeling of visual perception, and medical imaging.