LEADER 05511nam 2200709Ia 450 001 9910810039903321 005 20200520144314.0 010 $a1-282-54115-3 010 $a9786612541155 010 $a0-08-094912-6 035 $a(CKB)2560000000004242 035 $a(EBL)534973 035 $a(OCoLC)635293106 035 $a(SSID)ssj0000424958 035 $a(PQKBManifestationID)11281183 035 $a(PQKBTitleCode)TC0000424958 035 $a(PQKBWorkID)10475452 035 $a(PQKB)11699226 035 $a(Au-PeEL)EBL534973 035 $a(CaPaEBR)ebr10378858 035 $a(CaONFJC)MIL254115 035 $a(PPN)170233049 035 $a(OCoLC)809536657 035 $a(OCoLC)ocn809536657 035 $a(FR-PaCSA)45001589 035 $a(CaSebORM)9781597492720 035 $a(MiAaPQ)EBC534973 035 $a(EXLCZ)992560000000004242 100 $a20080820d2009 uy 0 101 0 $aeng 135 $aurunu||||| 181 $ctxt 182 $cc 183 $acr 200 10$aPattern recognition /$fSergios Theodoridis, Konstantinos Koutroumbas 205 $a4th ed. 210 $aAmsterdam ;$aLondon $cElsevier/Academic Press$dc2009 215 $a1 online resource (981 p.) 300 $aPrevious ed.: Amsterdam: Academic, 2003. 311 $a1-59749-272-8 320 $aIncludes bibliographical references and index. 327 $aFront Cover; Pattern Recognition; Copyright Page; Contents; Preface; Chapter 1 Introduction; 1.1 Is Pattern Recognition Important?; 1.2 Features, Feature Vectors, and Classifiers; 1.3 Supervised, Unsupervised, and Semi-Supervised Learning; 1.4 MATLAB Programs; 1.5 Outline of The Book; Chapter 2 Classifiers Based on Bayes Decision Theory; 2.1 Introduction; 2.2 Bayes Decision Theory; 2.3 Discriminant Functions and Decision Surfaces; 2.4 Bayesian Classification for Normal Distributions; 2.5 Estimation of Unknown Probability Density Functions; 2.6 The Nearest Neighbor Rule; 2.7 Bayesian Networks 327 $a2.8 Problems References; Chapter 3 Linear Classifiers; 3.1 Introduction; 3.2 Linear Discriminant Functions and Decision Hyperplanes; 3.3 The Perceptron Algorithm; 3.4 Least Squares Methods; 3.5 Mean Square Estimation Revisited; 3.6 Logistic Discrimination; 3.7 Support Vector Machines; 3.8 Problems; References; Chapter 4 Nonlinear Classifiers; 4.1 Introduction; 4.2 The XOR Problem; 4.3 The Two-Layer Perceptron; 4.4 Three-Layer Perceptrons; 4.5 Algorithms Based on Exact Classification of the Training Set; 4.6 The Back propagation Algorithm; 4.7 Variations on the Back propagation Theme 327 $a4.8 The Cost Function Choice 4.9 Choice of the Network Size; 4.10 A Simulation Example; 4.11 Networks with Weight Sharing; 4.12 Generalized Linear Classifiers; 4.13 Capacity of the l-Dimensional Space in Linear Dichotomies; 4.14 Polynomial Classifiers; 4.15 Radial Basis Function Networks; 4.16 Universal Approximators; 4.17 Probabilistic Neural Networks; 4.18 Support Vector Machines:The Nonlinear Case; 4.19 Beyond the SVM Paradigm; 4.20 Decision Trees; 4.21 Combining Classifiers; 4.22 The Boosting Approach to Combine Classifiers; 4.23 The Class Imbalance Problem; 4.24 Discussion; 4.25 Problems 327 $aReferences Chapter 5 Feature Selection; 5.1 Introduction; 5.2 Preprocessing; 5.3 The Peaking Phenomenon; 5.4 Feature Selection Based on Statistical Hypothesis Testing; 5.5 The Receiver Operating Characteristics (ROC) Curve; 5.6 Class Separability Measures; 5.7 Feature Subset Selection; 5.8 Optimal Feature Generation; 5.9 Neural Networks and Feature Generation/Selection; 5.10 A Hint On Generalization Theory; 5.11 The Bayesian Information Criterion; 5.12 Problems; References; Chapter 6 Feature Generation I: Data Transformation and Dimensionality Reduction; 6.1 Introduction 327 $a6.2 Basis Vectors and Images 6.3 The Karhunen-Loe?ve Transform; 6.4 The Singular Value Decomposition; 6.5 Independent Component Analysis; 6.6 Non-negative Matrix Factorization; 6.7 Nonlinear Dimensionality Reduction; 6.8 The Discrete Fourier Transform (DFT); 6.9 The Discrete Cosine and Sine Transforms; 6.10 The Hadamard Transform; 6.11 The Haar Transform; 6.12 The Haar Expansion Revisited; 6.13 Discrete Time Wavelet Transform (DTWT); 6.14 The Multi-resolution Interpretation; 6.15 Wavelet Packets; 6.16 A Look at Two-Dimensional Generalizations; 6.17 Applications; 6.18 Problems; References 327 $aChapter 7 330 $aThis book considers classical and current theory and practice, of supervised, unsupervised and semi-supervised pattern recognition, to build a complete background for professionals and students of engineering. The authors, leading experts in the field of pattern recognition, have provided an up-to-date, self-contained volume encapsulating this wide spectrum of information. The very latest methods are incorporated in this edition: semi-supervised learning, combining clustering algorithms, and relevance feedback. · Thoroughly developed to include many more worked examples to give grea 606 $aPattern recognition systems 606 $aPattern perception 615 0$aPattern recognition systems. 615 0$aPattern perception. 676 $a006.4 700 $aTheodoridis$b Sergios$f1951-$0299259 701 $aKoutroumbas$b Konstantinos$f1967-$0299260 801 0$bMiAaPQ 801 1$bMiAaPQ 801 2$bMiAaPQ 906 $aBOOK 912 $a9910810039903321 996 $aPattern recognition$9730085 997 $aUNINA