Nonparametric Statistics on Manifolds and Their Applications to Object Data Analysis

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3D reconstruction from pairs of images
A01=Leif Ellingson
A01=Victor Patrangenaru
advanced object data analysis applications
Affine Shape
analysis of 3D scenes
analysis of protein structure
Asymptotic Distribution
Author_Leif Ellingson
Author_Victor Patrangenaru
big data analysis
bilateral vision
bootstrap
Bootstrap Confidence Regions
Bootstrap Distribution
Category=JMB
Category=PBT
Category=UYT
computational topology
confidence
Confidence Region
Data Set
differential geometry methods
diffusion tensor imaging
digital camera image analysis
distribution
eq_bestseller
eq_computing
eq_isMigrated=1
eq_isMigrated=2
eq_nobargain
eq_non-fiction
eq_society-politics
Equivariant Embeddings
extrinsic
Extrinsic Mean
extrinsic means
Extrinsic Sample
Frechet means
Hadamard Manifold
Hilbert Manifold
Hilbert Space
Homogeneous Spaces
HRT
inference on manifolds
Lie Group
Lie Group Structure
mean
medical image analysis
Nonparametric Bootstrap
object data analysis
pattern recognition techniques
principal component analysis
Probability Measure
projective
Projective Frame
Projective Shape
region
Riemannian Manifold
Riemannian Structure
sample
shape analysis
space
statistical shape analysis
Stiefel Manifolds
Symmetric Space
tangent
Unit Eigenvector

Product details

  • ISBN 9780367737825
  • Weight: 453g
  • Dimensions: 156 x 234mm
  • Publication Date: 18 Dec 2020
  • Publisher: Taylor & Francis Ltd
  • Publication City/Country: GB
  • Product Form: Paperback
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A New Way of Analyzing Object Data from a Nonparametric Viewpoint

Nonparametric Statistics on Manifolds and Their Applications to Object Data Analysis provides one of the first thorough treatments of the theory and methodology for analyzing data on manifolds. It also presents in-depth applications to practical problems arising in a variety of fields, including statistics, medical imaging, computer vision, pattern recognition, and bioinformatics.

The book begins with a survey of illustrative examples of object data before moving to a review of concepts from mathematical statistics, differential geometry, and topology. The authors next describe theory and methods for working on various manifolds, giving a historical perspective of concepts from mathematics and statistics. They then present problems from a wide variety of areas, including diffusion tensor imaging, similarity shape analysis, directional data analysis, and projective shape analysis for machine vision. The book concludes with a discussion of current related research and graduate-level teaching topics as well as considerations related to computational statistics.

Researchers in diverse fields must combine statistical methodology with concepts from projective geometry, differential geometry, and topology to analyze data objects arising from non-Euclidean object spaces. An expert-driven guide to this approach, this book covers the general nonparametric theory for analyzing data on manifolds, methods for working with specific spaces, and extensive applications to practical research problems. These problems show how object data analysis opens a formidable door to the realm of big data analysis.

Victor Patrangenaru is a professor of statistics at Florida State University. He received his first PhD from the University of Haifa; his differential geometry dissertation on locally homogeneous Riemannian and pseudo-Riemannian manifolds was conferred the Morris Pulver award. His second PhD was conferred at Indiana University for his dissertation on asymptotic statistics on manifolds and their applications. He has been a recipient of the Rothrock Mathematics Teaching Award from Indiana University.

Leif Ellingson is an assistant professor at Texas Tech University. He received his PhD in statistics from Florida State University; his dissertation "Statistical Shape Analysis on Manifolds with Applications to Planar Contours and Structural Proteomics" received the Ralph A. Bradley award. He has also been a recipient of the New Faculty Award from the Texas Tech Alumni Association. His current research interests include nonparametric statistics on manifolds, shape analysis, computational methods in statistics, and utilizing statistical methods in structural proteomics.

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