A Seed-Based Segmentation Method for Scene Text Extraction

Document Analysis Systems(2014)

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摘要
Scene text extraction, i.e., segmenting text pixels from background, is an important step before the text can be recognized. It is a challenging problem due to the cluttered background and the variation of lighting. In this paper, we propose a seed-based segmentation method that can automatically judge the text polarity, extract seed points of text and background, and segment texts by semi-supervised learning (SSL). First, we estimate the text polarity and the stroke width using gradient local correlation. Then, all the points in the middle of stroke edge pairs satisfying the width and polarity are taken as foreground seeds, and the points in the middle of the edge pairs with opposite polarity are taken as background seeds. The whole image is then segmented into text and background using an SSL algorithm. Owing to the accurate estimate of text polarity and extraction of seed points, the proposed method yields good segmentation performance. Experimental results on the KAIST dataset demonstrate the superiority of the method.
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关键词
seed-based segmentation,semi-supervised learning,cluttered background,semisupervised learning,text pixels segmentation,learning (artificial intelligence),image segmentation,text polarity estimation,gradient local correlation,kaist dataset,color polarity,scene text extraction,text stroke estimation,feature extraction,lighting variation,gradient methods,segmentation performance,text extraction,seed-based segmentation method,lighting,noise reduction,semi supervised learning,noise,learning artificial intelligence,correlation
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