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Markov Models for Pattern Recognition : From Theory to Applications / by Gernot A. Fink.

SpringerLink Books Computer Science (2011-2024) Available online

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Format:
Book
Author/Creator:
Fink, Gernot A., author.
Contributor:
SpringerLink (Online service)
Series:
Computer Science (Springer-11645)
Advances in computer vision and pattern recognition 2191-6586
Advances in Computer Vision and Pattern Recognition, 2191-6586
Language:
English
Subjects (All):
Pattern perception.
Optical data processing.
Natural language processing (Computer science).
Artificial intelligence.
Pattern Recognition.
Image Processing and Computer Vision.
Natural Language Processing (NLP).
Artificial Intelligence.
Local Subjects:
Pattern Recognition.
Image Processing and Computer Vision.
Natural Language Processing (NLP).
Artificial Intelligence.
Physical Description:
1 online resource (XIII, 276 pages) : 45 illustrations.
Edition:
Second edition 2014.
Contained In:
Springer eBooks
Place of Publication:
London : Springer London : Imprint: Springer, 2014.
System Details:
text file PDF
Summary:
Markov models are extremely useful as a general, widely applicable tool for many areas in statistical pattern recognition. This unique text/reference places the formalism of Markov chain and hidden Markov models at the very center of its examination of current pattern recognition systems, demonstrating how the models can be used in a range of different applications. Thoroughly revised and expanded, this new edition now includes a more detailed treatment of the EM algorithm, a description of an efficient approximate Viterbi-training procedure, a theoretical derivation of the perplexity measure, and coverage of multi-pass decoding based on n-best search. Supporting the discussion of the theoretical foundations of Markov modeling, special emphasis is also placed on practical algorithmic solutions. Topics and features: Introduces the formal framework for Markov models, describing hidden Markov models and Markov chain models, also known as n-gram models Covers the robust handling of probability quantities, which are omnipresent when dealing with these statistical methods Presents methods for the configuration of hidden Markov models for specific application areas, explaining the estimation of the model parameters Describes important methods for efficient processing of Markov models, and the adaptation of the models to different tasks Examines algorithms for searching within the complex solution spaces that result from the joint application of Markov chain and hidden Markov models Reviews key applications of Markov models in automatic speech recognition, character and handwriting recognition, and the analysis of biological sequences Researchers, practitioners, and graduate students of pattern recognition will all find this book to be invaluable in aiding their understanding of the application of statistical methods in this area.
Contents:
Introduction
Application Areas
Part I: Theory
Foundations of Mathematical Statistics
Vector Quantization and Mixture Estimation
Hidden Markov Models
N-Gram Models
Part II: Practice
Computations with Probabilities
Configuration of Hidden Markov Models
Robust Parameter Estimation
Efficient Model Evaluation
Model Adaptation
Integrated Search Methods
Part III: Systems
Speech Recognition
Handwriting Recognition
Analysis of Biological Sequences.
Other Format:
Printed edition:
ISBN:
978-1-4471-6308-4
9781447163084
Access Restriction:
Restricted for use by site license.

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