Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Nonparametric Inference on Manifolds

View through CrossRef
This book introduces in a systematic manner a general nonparametric theory of statistics on manifolds, with emphasis on manifolds of shapes. The theory has important and varied applications in medical diagnostics, image analysis, and machine vision. An early chapter of examples establishes the effectiveness of the new methods and demonstrates how they outperform their parametric counterparts. Inference is developed for both intrinsic and extrinsic Fréchet means of probability distributions on manifolds, then applied to shape spaces defined as orbits of landmarks under a Lie group of transformations - in particular, similarity, reflection similarity, affine and projective transformations. In addition, nonparametric Bayesian theory is adapted and extended to manifolds for the purposes of density estimation, regression and classification. Ideal for statisticians who analyze manifold data and wish to develop their own methodology, this book is also of interest to probabilists, mathematicians, computer scientists, and morphometricians with mathematical training.
Title: Nonparametric Inference on Manifolds
Description:
This book introduces in a systematic manner a general nonparametric theory of statistics on manifolds, with emphasis on manifolds of shapes.
The theory has important and varied applications in medical diagnostics, image analysis, and machine vision.
An early chapter of examples establishes the effectiveness of the new methods and demonstrates how they outperform their parametric counterparts.
Inference is developed for both intrinsic and extrinsic Fréchet means of probability distributions on manifolds, then applied to shape spaces defined as orbits of landmarks under a Lie group of transformations - in particular, similarity, reflection similarity, affine and projective transformations.
In addition, nonparametric Bayesian theory is adapted and extended to manifolds for the purposes of density estimation, regression and classification.
Ideal for statisticians who analyze manifold data and wish to develop their own methodology, this book is also of interest to probabilists, mathematicians, computer scientists, and morphometricians with mathematical training.

Related Results

Riemannian Curvature of a Sliced Contact Metric Manifold
Riemannian Curvature of a Sliced Contact Metric Manifold
Contact geometry become a more important issue in the mathematical world with the works which had done in the 19th century. Many mathematicians have made studies on contact manifol...
LVM manifolds and lck metrics
LVM manifolds and lck metrics
Abstract In this paper, we compare two type of complex non-Kähler manifolds : LVM and lck manifolds. First, lck manifolds (for locally conformally Kähler manifolds) admit a...
Shared Actuator Manifold - An Innovative Conception to MInimize Costs
Shared Actuator Manifold - An Innovative Conception to MInimize Costs
Abstract Subsea Manifold has been used as a very attractive alternative in the development of subsea fields. The discover of giant fields in deep waters and the c...
BNPdensity: Bayesian nonparametric mixture modelling in R
BNPdensity: Bayesian nonparametric mixture modelling in R
SummaryRobust statistical data modelling under potential model mis‐specification often requires leaving the parametric world for the nonparametric. In the latter, parameters are in...
Evolutionary Grammatical Inference
Evolutionary Grammatical Inference
Grammatical Inference (also known as grammar induction) is the problem of learning a grammar for a language from a set of examples. In a broad sense, some data is presented to the ...
Extended Bayesian inference incorporating symmetry bias
Extended Bayesian inference incorporating symmetry bias
AbstractIn this study, we start by proposing a causal induction model that incorporates symmetry bias. This model has two parameters that control the strength of symmetry bias and ...
Quantum Modular $\widehat Z{}^G$-Invariants
Quantum Modular $\widehat Z{}^G$-Invariants
We study the quantum modular properties of $\widehat Z{}^G$-invariants of closed three-manifolds. Higher depth quantum modular forms are expected to play a central role for general...
Special Session, AGBAMI Field Development - AGBAMI Offloading System - Worldwide design and fabrication challenges
Special Session, AGBAMI Field Development - AGBAMI Offloading System - Worldwide design and fabrication challenges
Abstract The Agbami field is located 110 km offshore Nigeria in 1,400 m of water and is operated by STAR Deepwater Petroleum Limited on behalf of the concessionai...

Back to Top