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An unsupervised classification technique for detection of flipped orientations in document images

Publication Type : Journal Article

Publisher : International Journal of Electrical and Computer Engineering, Institute of Advanced Engineering and Science.

Source : International Journal of Electrical and Computer Engineering, Institute of Advanced Engineering and Science, Volume 6, Number 5, p.2140-2149 (2016)

Url : https://www.scopus.com/inward/record.uri?eid=2-s2.0-84999040015&doi=10.11591%2fijece.v6i5.10785&partnerID=40&md5=029dd2aa61204286d005a3de9cf15526

Campus : Mysuru

School : School of Engineering

Department : Computer Science

Year : 2016

Abstract : Detection of text orientation in document images is of preliminary concern prior to processing of documents by Optical Character Reader. The text direction in document images should exist generally in a specific orientation, i.e., text direction for any automated document reading system. The flipped text orientation leads to an unambiguous result in such fully automated systems. In this paper, we focus on development of text orientation direction detection module which can be incorporated as the perquisite process in automatic reading system. Orientation direction detection of text is performed through employing directional gradient features of document image and adapts an unsupervised learning approach for detection of flipped text orientation at which the document has been originally fed into scanning device. The unsupervised learning is built on the directional gradient features of text of document based on four possible different orientations. The algorithm is experimented on document samples of printed plain English text as well as filled in pre-printed forms of Telugu script. The outcome attained by algorithm proves to be consistent and adequate with an average accuracy around 94%. Copyright © 2016 Institute of Advanced Engineering and Science.

Cite this Research Publication : C. S. Vijayashree, Rani, N. S., and Vasudev, T., “An unsupervised classification technique for detection of flipped orientations in document images”, International Journal of Electrical and Computer Engineering, vol. 6, pp. 2140-2149, 2016.

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