Wu J. Essentials of Pattern Recognition. An Accessible Approach 2020
Download Torrent
Opens in your torrent client (e.g. qBittorrent)
Health
Fair1/0
Info Hash1DB3AF9C541A3524AEE849DD8F368F33B76671C8
Peers Updated9 hours ago (2026-03-25 00:30:37)
Description
Textbook in PDF format
This textbook introduces fundamental concepts, major models, and popular applications of pattern recognition for a one-semester undergraduate course. To ensure student understanding, the text focuses on a relatively small number of core concepts with an abundance of illustrations and examples. Concepts are reinforced with hands-on exercises to nurture the student's skill in problem solving. New concepts and algorithms are framed by real-world context and established as part of the big picture introduced in an early chapter. A problem-solving strategy is employed in several chapters to equip students with an approach for new problems in pattern recognition. This text also points out common errors that a new player in pattern recognition may encounter, and fosters the ability for readers to find useful resources and independently solve a new pattern recognition task through various working examples. Students with an undergraduate understanding of mathematical analysis, linear algebra, and probability will be well prepared to master the concepts and mathematical analysis presented here.
List of Figures page.
List of Tables.
Preface.
Notation.
Introduction and Overview
Introduction.
Mathematical Background.
Overview of a Pattern Recognition System.
Evaluation.
Domain-Independent Feature Extraction
Principal Component Analysis.
Fisher’s Linear Discriminant.
Classifiers and Tools
Support Vector Machines.
Probabilistic Methods.
Distance Metrics and Data Transformations.
Information Theory and Decision Trees.
Handling Diverse Data Formats
Sparse and Misaligned Data.
Hidden Markov Model.
Advanced Topics
The Normal Distribution.
The Basic Idea behind Expectation-Maximization.
Convolutional Neural Networks.
Bibliography
Index