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Image Segmentation And Compression Using Hidden Markov Models by Jia Li β€” book cover
Computer Programming, Computer Graphics & Design, Photography - Techniques & Equipment, Mathematics, Mathematics

Image Segmentation And Compression Using Hidden Markov Models

by Jia Li, Robert M. Gray, Li Jia Li
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Overview

In the current age of information technology, the issues of distributing and utilizing images efficiently and effectively are of substantial concern. Solutions to many of the problems arising from these issues are provided by techniques of image processing, among which segmentation and compression are topics of this book.
Image segmentation is a process for dividing an image into its constituent parts. For block-based segmentation using statistical classification, an image is divided into blocks and a feature vector is formed for each block by grouping statistics of its pixel intensities. Conventional block-based segmentation algorithms classify each block separately, assuming independence of feature vectors.
Image Segmentation and Compression Using Hidden Markov Models presents a new algorithm that models the statistical dependence among image blocks by two dimensional hidden Markov models (HMMs). Formulas for estimating the model according to the maximum likelihood criterion are derived from the EM algorithm. To segment an image, optimal classes are searched jointly for all the blocks by the maximum a posteriori (MAP) rule. The 2-D HMM is extended to multiresolution so that more context information is exploited in classification and fast progressive segmentation schemes can be formed naturally.
The second issue addressed in the book is the design of joint compression and classification systems using the 2-D HMM and vector quantization. A classifier designed with the side goal of good compression often outperforms one aimed solely at classification because overfitting to training data is suppressed by vector quantization.
Image Segmentation and Compression Using Hidden Markov Models is an essential reference source for researchers and engineers working in statistical signal processing or image processing, especially those who are interested in hidden Markov models. It is also of value to those working on statistical modeling.

Synopsis

In the current age of information technology, the issues of distributing and utilizing images efficiently and effectively are of substantial concern. Solutions to many of the problems arising from these issues are provided by techniques of image processing, among which segmentation and compression are topics of this book.
Image segmentation is a process for dividing an image into its constituent parts. For block-based segmentation using statistical classification, an image is divided into blocks and a feature vector is formed for each block by grouping statistics of its pixel intensities. Conventional block-based segmentation algorithms classify each block separately, assuming independence of feature vectors.
Image Segmentation and Compression Using Hidden Markov Models presents a new algorithm that models the statistical dependence among image blocks by two dimensional hidden Markov models (HMMs). Formulas for estimating the model according to the maximum likelihood criterion are derived from the EM algorithm. To segment an image, optimal classes are searched jointly for all the blocks by the maximum a posteriori (MAP) rule. The 2-D HMM is extended to multiresolution so that more context information is exploited in classification and fast progressive segmentation schemes can be formed naturally.
The second issue addressed in the book is the design of joint compression and classification systems using the 2-D HMM and vector quantization. A classifier designed with the side goal of good compression often outperforms one aimed solely at classification because overfitting to training data is suppressed by vector quantization.
Image Segmentation and Compression Using Hidden Markov Models is an essential reference source for researchers and engineers working in statistical signal processing or image processing, especially those who are interested in hidden Markov models. It is also of value to those working on statistical modeling.

Booknews

Much of the material here has appeared or will appear as journal articles or conference proceedings, but Li (Pennsylvania State U.) and Gray (Stanford U.) wanted to make the methods, algorithms, and results accessible outside a small circle of specialists. They explain a new algorithm for dividing an image into its constituent parts that models the statistical dependence among image blocks by two-dimensional hidden Markov models, deriving formulas from the general EM algorithm for estimating the model according to the maximum likelihood criterion. They also look at the design of joint compression and classification systems using the same model and vector quantization. Annotation c. Book News, Inc., Portland, OR (booknews.com)

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Editorials

Booknews

Much of the material here has appeared or will appear as journal articles or conference proceedings, but Li (Pennsylvania State U.) and Gray (Stanford U.) wanted to make the methods, algorithms, and results accessible outside a small circle of specialists. They explain a new algorithm for dividing an image into its constituent parts that models the statistical dependence among image blocks by two-dimensional hidden Markov models, deriving formulas from the general EM algorithm for estimating the model according to the maximum likelihood criterion. They also look at the design of joint compression and classification systems using the same model and vector quantization. Annotation c. Book News, Inc., Portland, OR (booknews.com)

Book Details

Published
August 1, 2000
Publisher
Springer-Verlag New York, LLC
Pages
160
Format
Hardcover
ISBN
9780792378990

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