Please use this identifier to cite or link to this item: http://hdl.handle.net/10397/23103
Title: A neural network approach for language separation of textual document images
Authors: Chu, K
Chi, Z 
Siu, W 
Issue Date: 1998
Source: Chinese journal of electronics, 1998, v. 7, no. 4, p. 381-386
Abstract: In this paper, a neural network approach is presented to classify grey scale Chinese and English document images. The approach, which consists of three steps: preprocessing, feature extraction and classification, can successfully handle Chinese and English document images of different densities, fonts, sizes and styles of characters. Two neural networks are employed. The first neural network is used to derive a set of 15 masks for extracting features. The coefficients of the masks are approximated to a set of computationally-simple values so that the computational complexity in extracting features can be reduced significantly. The second neural network of a smaller size is then trained using the extracted 15 features to perform the language separation. Experimental results on a set of 40 document images including 20 Chinese document images and 20 English document images show that 100% correct classification rate can be achieved. Our approach is compared favorably with an existing language separation method.
Keywords: Document image processing
Neural network applications
Texture analysis
Written language separation
Journal: Chinese Journal of Electronics 
ISSN: 1022-4653
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