Analysis of Different Recognition Technique Classification and their Accuracy Measure over Odia Script-A Review

Authors

  • Rajat Ketan Sahu  Department of Computer Science and Application, Sambalpur University, Jyoti Vihar, Burla, Odisha, India
  • Anita Minz  Department of Computer Science and Application, Sambalpur University, Jyoti Vihar, Burla, Odisha, India
  • Sagarika Mishra  Department of Computer Science and Application, Sambalpur University, Jyoti Vihar, Burla, Odisha, India
  • Chandrasekhar Panda  Department of Computer Science and Application, Sambalpur University, Jyoti Vihar, Burla, Odisha, India

Keywords:

Optical Character Recognition (OCR), Odia Script, Classification, Recognition.

Abstract

This paper presents a literature review on character recognition techniques. (OCR) Optical Character Recognition frameworks are able to identify varieties of text styles and printed characters. This means that by scanning a document the device is able to essentially ‘read’ the content. Character identification is a requesting specialization of pattern recognition, machine learning, and advance image processing. Various work has been done as such far for independent Indian language like Hindi, Urdu, Gujarati, Punjabi and onward. The latest research in this area has been capable to grow some new methodologies to overcome the difficulty of Odia writing style. Be that as it may, narrow exploration has been done over on odia content. Thus far various techniques are projected for segmentation, feature extraction, classification, and recognition tasks of Odia characters. This paper tries to review, their relative strength and weakness unit layout done by various research worker over on Odia content in last few years. The basic objective of this paperwork is to nearby present an overview of different existing methods that have been developed to recognize Odia character throughout last decade. The paper may be a concern the individuals who are interested to work in the fields of acknowledgment of Odia script.

References

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Published

2017-12-31

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Section

Research Articles

How to Cite

[1]
Rajat Ketan Sahu, Anita Minz, Sagarika Mishra, Chandrasekhar Panda, " Analysis of Different Recognition Technique Classification and their Accuracy Measure over Odia Script-A Review, International Journal of Scientific Research in Science and Technology(IJSRST), Online ISSN : 2395-602X, Print ISSN : 2395-6011, Volume 3, Issue 8, pp.930-937, November-December-2017.