
Handwriting Recognition
Soft Computing and Probabilistic Approaches
Springer (Publisher)
Published on 7. December 2010
Book
Paperback/Softback
XV, 230 pages
978-3-642-07280-2 (ISBN)
Description
Over the last few decades, research on handwriting recognition has made impressive progress. The research and development on handwritten word recognition are to a large degree motivated by many application areas, such as automated postal address and code reading, data acquisition in banks, text-voice conversion, security, etc. As the prices of scanners, com puters and handwriting-input devices are falling steadily, we have seen an increased demand for handwriting recognition systems and software pack ages. Some commercial handwriting recognition systems are now available in the market. Current commercial systems have an impressive performance in recognizing machine-printed characters and neatly written texts. For in stance, High-Tech Solutions in Israel has developed several products for container ID recognition, car license plate recognition and package label recognition. Xerox in the U. S. has developed TextBridge for converting hardcopy documents into electronic document files. In spite of the impressive progress, there is still a significant perfor mance gap between the human and the machine in recognizing off-line unconstrained handwritten characters and words. The difficulties encoun tered in recognizing unconstrained handwritings are mainly caused by huge variations in writing styles and the overlapping and the interconnection of neighboring characters. Furthermore, many applications demand very high recognition accuracy and reliability. For example, in the banking sector, although automated teller machines (ATMs) and networked banking sys tems are now widely available, many transactions are still carried out in the form of cheques.
More details
Series
Edition
Softcover reprint of hardcover 1st ed. 2003
Language
English
Place of publication
Berlin
Germany
Publishing group
Springer Berlin
Target group
Professional and scholarly
Research
Illustrations
XV, 230 p.
Dimensions
Height: 235 mm
Width: 155 mm
Thickness: 14 mm
Weight
388 gr
ISBN-13
978-3-642-07280-2 (9783642072802)
DOI
10.1007/978-3-540-44850-1
Schweitzer Classification
Other editions
Additional editions

Zhi-Qiang Liu | Jin-Hai Cai | Richard Buse
Handwriting Recognition
Soft Computing and Probabilistic Approaches
Book
07/2003
Springer
€106.99
Shipment within 10-15 days
Persons
Prof. Jia ZENG is currently working at the School of Computer Science and Technology, Soochow University, Suzhou 215006, China. Before that, he was a Visiting Research Scholar with the Department of Computer Science, Hong Kong Baptist University from 2009 to 2010 and a Research Fellow in the Department of Electronic Engineering, City University of Hong Kong from 2006 to 2008. He obtained Ph.D. from School of Creative Media, City University of Hong Kong in October 2006, and B.Eng. with excellent academic honors at Wuhan University of Technology, China in 2002. His research interests have been mainly in the areas of type-2 fuzzy systems, probabilistic graphical models, pattern recognition and computational biology. He has authored and co-authored a number of publications appearing in high-profile journals and leading conferences. He won the 2006 Postgraduate Student Paper Contest, Second Prize, IEEE Region 10 and 2005 Postgraduate Student Paper Contest, First Prize, IEEE Region 10, respectively. He has also been invited to serve in a number of journals and conferences as the reviewer.
Prof Zhi-Qiang LIU received the M.A.Sc. degree in Aerospace Engineering from the Institute for Aerospace Studies, the University of Toronto, and the Ph.D. degree in Electrical Engineering from The University of Alberta, Canada. He is currently at the School of Creative Media, City University of Hong Kong. He has taught computer architecture, computer networks, artificial intelligence, programming languages, machine learning, pattern recognition, computer graphics, and art & technology. His interests are neural-fuzzy systems, machine learning, media computing and computer vision.
Content
1 Introduction.- 1.1 Feature Extraction Methods.- 1.2 Pattern Recognition Methods.- 2 Pre-processing and Feature Extraction.- 2.1 Pre-processing of Handwritten Images.- 2.2 Feature Extraction from Binarized Images.- 2.3 Feature Extraction Using Gabor Filters.- 2.4 Concluding Remarks.- 3 Hidden Markov Model-Based Method for Recognizing Handwritten Digits.- 3.1 Theory of Hidden Markov Models.- 3.2 Recognizing Handwritten Numerals Using Statistical and Structural Information.- 3.3 Experimental Results.- 3.4 Conclusion.- 4 Markov Models with Spectral Features for Handwritten Numeral Recognition.- 4.1 Related Work Using Contour Information.- 4.2 Fourier Descriptors.- 4.3 Hidden Markov Model in Spectral Space.- 4.4 Experimental Results.- 4.5 Discussion.- 5 Markov Random Field Model for Recognizing Handwritten Digits.- 5.1 Fundamentals of Markov Random Fields.- 5.2 Markov Random Field for Pattern Recognition.- 5.3 Recognition of Handwritten Numerals Using MRF Models.- 5.4 Conclusion.- 6 Markov Random Field Models for Recognizing Handwritten Words.- 6.1 Markov Random Field for Handwritten Word Recognition.- 6.2 Neighborhood Systems and Cliques.- 6.3 Clique Functions.- 6.4 Maximizing the Compatibility with Relaxation Labeling.- 6.5 Design of Weights.- 6.6 Experimental Results.- 6.7 Conclusion.- 7 A Structural and Relational Approach to Handwritten Word Recognition.- 7.1 Introduction.- 7.2 Gabor Parameter Estimation.- 7.3 Feature Extraction.- 7.4 Conditional Rule Generation System.- 7.5 Experimental Results.- 7.6 Conclusion.- 8 Handwritten Word Recognition Using Fuzzy Logic.- 8.1 Introduction.- 8.2 Extraction of Oriented Parts.- 8.3 System Training.- 8.4 Word Recognition.- 8.5 Experimental Results.- 8.6 Conclusion.- 9 Conclusion.- 9.1 Summary and Discussions.- 9.2 Future Directions.- 9.3 References.