Unsupervised Block Covering Analysis for Text-Line Segmentation of Arabic Ancient Handwritten Document Images.

ICPR(2010)

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摘要
This paper presents a new method for automatic text-line extraction from Arabic historical handwritten documents presenting an overlapping and multi-touching characters problems. Our approach is based on block covering analysis using unsupervised technique. This algorithm performs firstly a statistical block analysis which computes the optimal number of document decomposition into vertical strips. Then, our algorithm achieves a fuzzy base line detection using fuzzy C-means algorithm. Finally, blocks are assigned to its corresponding lines. Experiment results show that the proposed method achieves high accuracy about 95% for detecting text lines in Arabic historical handwritten document images written with different scripts.
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关键词
document image processing,handwriting recognition,image segmentation,natural languages,statistical analysis,text analysis,Arabic ancient handwritten document images,automatic text-line extraction,fuzzy C-means algorithm,fuzzy base line detection,multitouching characters problems,statistical block analysis,text-line segmentation,unsupervised block covering analysis,Arabic historical document,Block covering Analysis,Fuzzy C-means,Fuzzy base line detection,Text-line segmentation
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