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A Text Extraction Method for Image with Complex Background Based on Conditional Random Field |
LI Min-Hua1,2, WANG Chun-Heng1, XIAO Bai-Hua1, BAI-Meng2 |
1.Key Laboratory of Complex Systems and Intelligence Science, Institute of Automation, Chinese Academy of Sciences, Beijing 100190 2.Department of Electrical and Information Engineering, Shandong University of Science and Technology Jinan, Jinan 250031 |
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Abstract Aiming at the problem of extracting text from images with complex background, a method based on conditional random field is proposed. The proposed method integrates various features and takes context information into account, thus it can extract text information effectively from images. The text extraction performance in different color spaces and with different features is compared. Experimental results demonstrate the validity of the proposed method.
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Received: 24 October 2008
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