Front cover image for Guide to OCR for Indic scripts : document recognition and retrieval

Guide to OCR for Indic scripts : document recognition and retrieval

Optical Character Recognition (OCR) is a key enabling technology critical to creating indexed, digital library content, and it is especially valuable for Indic scripts, for which there has been very little digital access. Indic scripts, the ancient Brahmi scripts prevalent in the Indian subcontinent, present some challenges for OCR that are different from those faced with Latin and Oriental scripts. But properly utilized, OCR will help to make Indic digital archives practically accessible to researchers and lay users alike by creating searchable indexes and machine-readable text repositories. This unique guide/reference is the very first comprehensive book on the subject of OCR for Indic scripts, providing an overview of the state-of-the-art research in this field as well as other issues related to facilitating query and retrieval of Indic documents from digital libraries. All major research groups working in this area are represented in this book, which is divided into sections on recognition of Indic scripts and retrieval of Indic documents. Topics and features: Contains contributions from the leading researchers in the field Discusses data set creation for OCR development Describes OCR systems that cover eight different scripts: Bangla, Devanagari, Gurmukhi, Gujarati, Kannada, Malayalam, Tamil, and Urdu (Perso-Arabic) Explores the challenges of Indic script handwriting recognition in the online domain Examines the development of handwriting-based text input systems Describes ongoing work to increase access to Indian cultural heritage materials Provides a section on the enhancement of text and images obtained from historical Indic palm leaf manuscripts Investigates different techniques for word spotting in Indic scripts Reviews mono-lingual and cross-lingual information retrieval in Indic languages This is an excellent reference for researchers and graduate students studying OCR technology and methodologies. This volume will contribute to opening up the rich Indian cultural heritage embodied in millions of ancient and contemporary documents spanning topics such as science, literature, medicine, astronomy, mathematics and philosophy. Venu Govindaraju FIEEE FIAPR, is a Distinguished Professor of Computer Science and Engineering at the University at Buffalo. He has over 20 years of research experience in pattern recognition, information retrieval and biometrics. His seminal work on handwriting recognition was at the core of the first handwritten address interpretation system used by the U.S. Postal Service. Srirangaraj Setlur SMIEEE, is a Principal Research Scientist at the University at Buffalo. He has over 15 years of research experience in pattern recognition that includes NSF sponsored work on multilingual OCR technologies for digital libraries and other applications. His work on postal automation has led to technology adopted by the U.S. Postal Service, and Royal Mail in the U.K
eBook, English, ©2009
Springer, London, ©2009
1 online resource (xxi, 325 pages) : illustrations (some color)
9781848003309, 1848003307
489215682
Section: Recognition of Indic scripts
Building Data Sets for Indian Language OCR Research
On OCR of Major Indian Scripts: Bangla and Devanagari
A Complete Machine-Printed Gurmukhi OCR System
Progress in Gujarati Document Processing and Character Recognition
Design of a Bilingual Kannada-English OCR
Recognition of Malayalam Documents
A Complete OCR System for Tamil Magazine Documents
Experiments on Urdu Text Recognition
The BBN Byblos Hindi OCR System
Generalization of Hindi OCR Using Adaptive Segmentation and Font Files
Online Handwriting Recognition for Indic Scripts
Section: Retrieval of Indic documents
Enhancing Access to Primary Cultural Heritage Materials of India
Digital Image Enhancement of Indic Historical Manuscripts
GFG-Based Compression and Retrieval of Document Images in Indian Scripts
Word Spotting for Indic Documents to Facilitate Retrieval
Indian Language Information Retrieval