Minimax Theory of Image Reconstruction

This document was uploaded by one of our users. The uploader already confirmed that they had the permission to publish it. If you are author/publisher or own the copyright of this documents, please report to us by using this DMCA report form.

Simply click on the Download Book button.

Yes, Book downloads on Ebookily are 100% Free.

Sometimes the book is free on Amazon As well, so go ahead and hit "Search on Amazon"

There exists a large variety of image reconstruction methods proposed by different authors (see e. g. Pratt (1978), Rosenfeld and Kak (1982), Marr (1982)). Selection of an appropriate method for a specific problem in image analysis has been always considered as an art. How to find the image reconstruction method which is optimal in some sense? In this book we give an answer to this question using the asymptotic minimax approach in the spirit of Ibragimov and Khasminskii (1980a,b, 1981, 1982), Bretagnolle and Huber (1979), Stone (1980, 1982). We assume that the image belongs to a certain functional class and we find the image estimators that achieve the best order of accuracy for the worst images in the class. This concept of optimality is rather rough since only the order of accuracy is optimized. However, it is useful for comparing various image reconstruction methods. For example, we show that some popular methods such as simple linewise processing and linear estimation are not optimal for images with sharp edges. Note that discontinuity of images is an important specific feature appearing in most practical situations where one has to distinguish between the "image domain" and the "background" . The approach of this book is based on generalization of nonparametric regression and nonparametric change-point techniques. We discuss these two basic problems in Chapter 1. Chapter 2 is devoted to minimax lower bounds for arbitrary estimators in general statistical models.

Author(s): A. P. Korostelev, A. B. Tsybakov (auth.)
Series: Lecture Notes in Statistics 82
Edition: 1
Publisher: Springer-Verlag New York
Year: 1993

Language: English
Pages: 258
Tags: Statistics, general

Front Matter....Pages i-xi
Nonparametric Regression and Change-Point Problems....Pages 1-45
Minimax Lower Bounds....Pages 46-87
The Problem of Edge and Image Estimation....Pages 88-106
Optimal Image and Edge Estimation for Boundary Fragments....Pages 107-127
Generalizations and Extensions....Pages 128-162
Image Reconstruction Under Restrictions on Estimates....Pages 163-181
Estimation of Support of a Density....Pages 182-197
Estimation of the Domain’s Area....Pages 198-222
Image Estimation from Indirect Observations....Pages 223-242
Back Matter....Pages 243-260