3 research outputs found

    Ontologies and Bigram-based approach for Isolated Non-word Errors Correction in OCR System

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    In this paper, we describe a new and original approach for post-processing step in an OCR system. This approach is based on new method of spelling correction to correct automatically misspelled words resulting from a character recognition step of scanned documents by combining both ontologies and bigram code in order to create a robust system able to solve automatically the anomalies of classical approaches. The proposed approach is based on a hybrid method which is spread over two stages, first one is character recognition by using the ontological model and the second one is word recognition based on spelling correction approach based on bigram codification for detection and correction of errors. The spelling error is broadly classified in two categories namely non-word error and real-word error. In this paper, we interested only on detection and correction of non-word errors because this is the only type of errors treated by an OCR. In addition, the use of an online external resource such as WordNet proves necessary to improve its performances

    非等方的拡散法による自然画像の領域分割に関する研究

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    室蘭工業大学 (Muroran Institute of Technology)博士(工学

    Memoirs of the Muroran Institute of Technology vol.50

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