Handwritten historical document analysis, recognition, and retrieval state of the art and future trends / [electronic resource] : edited by Andreas Fischer, Marcus Liwicki, Rolf Ingold. - Singapore : World Scientific, 2020. - 1 online resource (xiii, 254 p.) - Series in machine perception and artificial intelligence ; v. 89 . - Series in machine perception and artificial intelligence ; v. 89. .

Inlcudes index.

Introduction / Andreas Fischer, Marcus Liwicki and Rolf Ingold -- The HisDoc project. IAM-HistDB : a dataset of handwritten historical documents / Andreas Fischer. DIVA-HisDB : a precisely annotated dataset of challenging medieval manuscripts / Foteini Simistira Liwicki. Layout analysis in handwritten historical documents / Mathias Seuret. Automatic handwriting recognition in historical documents / Andreas Fischer. Handwritten keyword spotting in historical documents / Volkmar Frinken and Shriphani Palakodety. DIVAServices : transforming document analysis methods into web services / Marcel Gygli. GraphManuscribble : interactive annotation of historical manuscripts / Angelika Garz -- Related research projects. OldDocPro : old greek document recognition / Basilis Gatos, Georgios Louloudis, Nikolaos Stamatopoulos, George Retsinas, Giorgos Sfikas, Angelos P Giotis, Foteini Simistira Liwicki, Vassilis Papavassiliou and Vassilis Katsouros. Advances in handwritten keyword indexing and search technologies / Joan Puigcerver, Alejandro H Toselli and Enrique Vidal. Browsing of the social network of the past: Information extraction from population manuscript images / Alicia Fornés, Josep Lladós and Joana Maria Pujadas-Mora. Lifelong learning for text retrieval and recognition in historical handwritten document collections / Lambert Schomaker. Conclusions and future trends / Andreas Fischer, Marcus Liwicki and Rolf Ingold -- Index.

"In recent years, libraries and archives all around the world have increased their efforts to digitize historical manuscripts. To integrate the manuscripts into digital libraries, pattern recognition and machine learning methods are needed to extract and index the contents of the scanned images. The unique compendium describes the outcome of the HisDoc research project, a pioneering attempt to study the whole processing chain of layout analysis, handwriting recognition, and retrieval of historical manuscripts. This description is complemented with an overview of other related research projects, in order to convey the current state of the art in the field and outline future trends. This must-have volume is a relevant reference work for librarians, archivists and computer scientists"--Publisher's website.


Mode of access: World Wide Web.
System requirements: Adobe Acrobat Reader.

9789811203244


Optical pattern recognition.
Text processing (Computer science)
Document imaging systems.
Image analysis.
Digital libraries.


Electronic books.

TA1650 / .H36 2020

006.42