Character Recognition Systems A Guide for Students and Practitioners
by Cheriet, Mohamed; Kharma, Nawwaf; Liu, Cheng-Lin; Suen, ChingBuy New
Rent Textbook
Used Textbook
We're Sorry
Sold Out
eTextbook
We're Sorry
Not Available
Summary
Author Biography
Mohamed Cheriet is Professor in the Department of Automation Engineering at the École de Technologie Supérieure of University of Quebec, Montreal. He is the Director of Synchromedia Consortium, working in the fields of image processing, document analysis and recognition, learning algorithms, perception, and intellipresence. Nawwaf Kharma is Associate Professor in the Department of Computer and Electrical Engineering at Concordia University, Montreal. He is Director of the Concordia Computational Intelligence Lab (CeCIL) and a member of the ACM-SIGEVO. ChenG-LIn Liu is a Research Professor and the Deputy Director of the National Laboratory of Pattern Recognition (NLPR), Institute of Automation, Chinese Academy of Sciences. He is working in the fields of pattern recognition, machine learning, and document analysis. Ching Y. Suen is the Director of the Centre for Pattern Recognition and Machine Intelligence of Concordia University in Montreal, working in the fields of handwriting recognition and human-computer communications.
Table of Contents
| Preface | p. xiii |
| Acknowledgments | p. xvii |
| List of Figures | p. xix |
| List of Tables | p. xxvii |
| Acronyms | p. xxix |
| Introduction: Character Recognition, Evolution, and Development | p. 1 |
| Generation and Recognition of Characters | p. 1 |
| History of OCR | p. 2 |
| Development of New Techniques | p. 3 |
| Recent Trends and Movements | p. 3 |
| Organization of the Remaining Chapters | p. 3 |
| References | p. 4 |
| Tools for Image Preprocessing | p. 5 |
| Generic Form-Processing System | p. 5 |
| A Stroke Model for Complex Background Elimination | p. 8 |
| Global Gray Level Thresholding | p. 9 |
| Local Gray Level Thresholding | p. 11 |
| Local Feature Thresholding-Stroke-Based Model | p. 12 |
| Choosing the Most Efficient Character Extraction Method | p. 15 |
| Cleaning Up Form Items Using Stroke-Based Model | p. 19 |
| A Scale-Space Approach for Visual Data Extraction | p. 21 |
| Image Regularization | p. 22 |
| Data Extraction | p. 24 |
| Concluding Remarks | p. 29 |
| Data Preprocessing | p. 30 |
| Smoothing and Noise Removal | p. 30 |
| Skew Detection and Correction | p. 32 |
| Slant Correction | p. 34 |
| Character Normalization | p. 36 |
| Contour Tracing/Analysis | p. 41 |
| Thinning | p. 45 |
| Chapter Summary | p. 50 |
| References | p. 51 |
| Feature Extraction, Selection, and Creation | p. 54 |
| Feature Extraction | p. 54 |
| Moments | p. 55 |
| Histogram | p. 58 |
| Direction Features | p. 59 |
| Image Registration | p. 64 |
| Hough Transform | p. 68 |
| Line-Based Representation | p. 70 |
| Fourier Descriptors | p. 73 |
| Shape Approximation | p. 76 |
| Topological Features | p. 78 |
| Linear Transforms | p. 79 |
| Kernels | p. 86 |
| Feature Selection for Pattern Classification | p. 90 |
| Review of Feature Selection Methods | p. 90 |
| Feature Creation for Pattern Classification | p. 104 |
| Categories of Feature Creation | p. 104 |
| Review of Feature Creation Methods | p. 105 |
| Future Trends | p. 118 |
| Chapter Summary | p. 120 |
| References | p. 120 |
| Pattern Classification Methods | p. 129 |
| Overview of Classification Methods | p. 129 |
| Statistical Methods | p. 131 |
| Bayes Decision Theory | p. 131 |
| Parametric Methods | p. 132 |
| Nonparametric Methods | p. 138 |
| Artificial Neural Networks | p. 142 |
| Single-Layer Neural Network | p. 144 |
| Multilayer Perceptron | p. 148 |
| Radial Basis Function Network | p. 152 |
| Polynomial Network | p. 155 |
| Unsupervised Learning | p. 156 |
| Learning Vector Quantization | p. 160 |
| Support Vector Machines | p. 162 |
| Maximal Margin Classifier | p. 163 |
| Soft Margin and Kernels | p. 165 |
| Implementation Issues | p. 166 |
| Structural Pattern Recognition | p. 171 |
| Attributed String Matching | p. 172 |
| Attributed Graph Matching | p. 174 |
| Combining Multiple Classifiers | p. 179 |
| Problem Formulation | p. 180 |
| Combining Discrete Outputs | p. 181 |
| Combining Continuous Outputs | p. 183 |
| Dynamic Classifier Selection | p. 190 |
| Ensemble Generation | p. 190 |
| A Concrete Example | p. 194 |
| Chapter Summary | p. 197 |
| References | p. 197 |
| Word and String Recognition | p. 204 |
| Introduction | p. 204 |
| Character Segmentation | p. 206 |
| Overview of Dissection Techniques | p. 207 |
| Segmentation of Handwritten Digits | p. 210 |
| Classification-Based String Recognition | p. 214 |
| String Classification Model | p. 214 |
| Classifier Design for String Recognition | p. 220 |
| Search Strategies | p. 227 |
| Strategies for Large Vocabulary | p. 234 |
| HMM-Based Recognition | p. 237 |
| Introduction to HMMs | p. 237 |
| Theory and Implementation | p. 238 |
| Application of HMMs to Text Recognition | p. 243 |
| Implementation Issues | p. 244 |
| Techniques for Improving HMMs' Performance | p. 247 |
| Summary to HMM-Based Recognition | p. 250 |
| Holistic Methods for Handwritten Word Recognition | p. 250 |
| Introduction to Holistic Methods | p. 251 |
| Overview of Holistic Methods | p. 255 |
| Summary to Holistic Methods | p. 256 |
| Chapter Summary | p. 256 |
| References | p. 257 |
| Case Studies | p. 263 |
| Automatically Generating Pattern Recognizers with Evolutionary Computation | p. 263 |
| Motivation | p. 264 |
| Introduction | p. 264 |
| Hunters and Prey | p. 266 |
| Genetic Algorithm | p. 271 |
| Experiments | p. 272 |
| Analysis | p. 280 |
| Future Directions | p. 281 |
| Offline Handwritten Chinese Character Recognition | p. 282 |
| Related Works | p. 283 |
| System Overview | p. 285 |
| Character Normalization | p. 286 |
| Direction Feature Extraction | p. 289 |
| Classification Methods | p. 293 |
| Experiments | p. 293 |
| Concluding Remarks | p. 301 |
| Segmentation and Recognition of Handwritten Dates on Canadian Bank Cheques | p. 301 |
| Introduction | p. 302 |
| System Architecture | p. 303 |
| Date Image Segmentation | p. 303 |
| Date Image Recognition | p. 308 |
| Experimental Results | p. 315 |
| Concluding Remarks | p. 317 |
| References | p. 317 |
| Index | p. 321 |
| Table of Contents provided by Ingram. All Rights Reserved. |
An electronic version of this book is available through VitalSource.
This book is viewable on PC, Mac, iPhone, iPad, iPod Touch, and most smartphones.
By purchasing, you will be able to view this book online, as well as download it, for the chosen number of days.
Digital License
You are licensing a digital product for a set duration. Durations are set forth in the product description, with "Lifetime" typically meaning five (5) years of online access and permanent download to a supported device. All licenses are non-transferable.
More details can be found here.
A downloadable version of this book is available through the eCampus Reader or compatible Adobe readers.
Applications are available on iOS, Android, PC, Mac, and Windows Mobile platforms.
Please view the compatibility matrix prior to purchase.
