Guide to OCR for Arabic Scripts

Many of these techniques can also be applied to other scripts, serving as an inspiration to all groups working in the area of OCR.

Bibliographic Details
Other Authors: Märgner, Volker (Editor), El Abed, Haikal (Editor)
Format: eBook
Language:English
Published: London Springer London 2012, 2012
Edition:1st ed. 2012
Subjects:
Online Access:
Collection: Springer eBooks 2005- - Collection details see MPG.ReNa
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100 1 |a Märgner, Volker  |e [editor] 
245 0 0 |a Guide to OCR for Arabic Scripts  |h Elektronische Ressource  |c edited by Volker Märgner, Haikal El Abed 
250 |a 1st ed. 2012 
260 |a London  |b Springer London  |c 2012, 2012 
300 |a XX, 592 p  |b online resource 
505 0 |a Part I: Pre-Processing -- An Assessment of Arabic Handwriting Recognition Technology -- Layout Analysis of Arabic Script Documents -- A Multi-Stage Approach to Arabic Document Analysis -- Pre-Processing Issues in Arabic OCR -- Segmentation of Ancient Arabic Documents -- Features for HMM-Based Arabic Handwritten Word Recognition Systems -- Part II: Recognition -- Printed Arabic Text Recognition -- Handwritten Arabic Word Recognition Using the IFN/ENIT-Database -- RWTH OCR: A Large Vocabulary Optical Character Recognition System for Arabic Scripts -- Arabic Handwriting Recognition using Bernoulli HMMs -- Handwritten Farsi Words Recognition Using Hidden Markov Models -- Offline Arabic Handwriting Recognition with Multidimensional Recurrent Neural Networks -- Application of Fractal Theory in Farsi/Arabic Document Analysis -- Multi-Stream Markov Models for Arabic Handwriting Recognition --  
505 0 |a Part IV: Applications -- A Robust Word Spotting System for Historical Arabic Manuscripts -- Arabic Text recognition using a Script-Independent Methodology: A Unified HMM-based Approach for Machine-print and Handwritten Text -- Arabic Handwriting Recognition Using VDHMM and Over-Segmentation -- Online Arabic Databases and Applications -- Online Arabic Handwritten Words Recognition Based on HMM and Combination of Online and Offline Features 
505 0 |a Segmentation of Ancient Arabic Documents -- Features for HMM-Based Arabic Handwritten Word Recognition Systems -- Part II: Recognition -- Printed Arabic Text Recognition -- Handwritten Arabic Word Recognition Using the IFN/ENIT-Database -- RWTH OCR: A Large Vocabulary Optical Character Recognition System for Arabic Scripts -- Arabic Handwriting Recognition using Bernoulli HMMs -- Handwritten Farsi Words Recognition Using Hidden Markov Models -- Offline Arabic Handwriting Recognition with Multidimensional Recurrent Neural Networks -- Application of Fractal Theory in Farsi/Arabic Document Analysis -- Multi-Stream Markov Models for Arabic Handwriting Recognition -- Towards Distributed Cursive Writing OCR Systems based on the Combination of Complementary Approaches -- Part III: Evaluation -- Data Collection and Annotation for Arabic Document Analysis -- Arabic Handwriting Recognition Competitions -- Benchmarking Strategy for Arabic Screen Rendered Word Recognition --  
505 0 |a Towards Distributed Cursive Writing OCR Systems based on the Combination of Complementary Approaches -- Part III: Evaluation -- Data Collection and Annotation for Arabic Document Analysis -- Arabic Handwriting Recognition Competitions -- Benchmarking Strategy for Arabic Screen Rendered Word Recognition -- Part IV: Applications -- A Robust Word Spotting System for Historical Arabic Manuscripts -- Arabic Text recognition using a Script-Independent Methodology: A Unified HMM-based Approach for Machine-print and Handwritten Text -- Arabic Handwriting Recognition Using VDHMM and Over-Segmentation -- Online Arabic Databases and Applications -- Online Arabic Handwritten Words Recognition Based on HMM and Combination of Online and Offline Features -- Part I: Pre-Processing -- An Assessment of Arabic Handwriting Recognition Technology -- Layout Analysis of Arabic Script Documents -- A Multi-Stage Approach to Arabic Document Analysis -- Pre-Processing Issues in Arabic OCR --  
653 |a Computer vision 
653 |a Computer Vision 
653 |a Natural Language Processing (NLP) 
653 |a Automated Pattern Recognition 
653 |a Natural language processing (Computer science) 
653 |a Pattern recognition systems 
700 1 |a El Abed, Haikal  |e [editor] 
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989 |b Springer  |a Springer eBooks 2005- 
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082 0 |a 006.37 
520 |a Many of these techniques can also be applied to other scripts, serving as an inspiration to all groups working in the area of OCR.  
520 |a Topics and features: Contains contributions from the leading researchers in the field With a Foreword by Professor Bente Maegaard of the University of Copenhagen Presents a detailed overview of Arabic character recognition technology, covering a range of different aspects of pre-processing and feature extraction Reviews a broad selection of varying approaches, including HMM-based methods and a recognition system based on multidimensional recurrent neural networks Examines the evaluation of Arabic script recognition systems, discussing data collection and annotation, benchmarking strategies, and handwriting recognition competitions Describes numerous applications of Arabic script recognition technology, from historical Arabic manuscripts to online Arabic recognition This authoritative work is an essential reference for all researchers and graduate students interested in OCR technology and methodology in general, and in Arabic scripts in particular 
520 |a Optical Character Recognition (OCR) is a key technology enabling access to digital text data. This technique is especially valuable for Arabic scripts, for which there has been very little digital access. Arabic script is widely used today. It is estimated that approximately 200 million people use Arabic as a first language, and the Arabic script is shared by an additional 13 languages, making it the second most widespread script in the world. However, Arabic scripts pose unique challenges for OCR systems that cannot be simply adapted from existing Latin character-based processing techniques. This comprehensive Guide to OCR for Arabic Scripts is the first book of its kind, specifically devoted to this emerging field. Presenting state-of-the-art research from an international selection of pre-eminent authorities, the book reviews techniques and algorithms for the recognition of both handwritten and printed Arabic scripts.