Title :
Omni-font character recognition using templates and neural networks
Author :
Mostert, S. ; Brand, Johan Anthony
Author_Institution :
Stellenbosch Univ., South Africa
fDate :
9/11/1992 12:00:00 AM
Abstract :
With regard to facsimile graphic pages, routines to extract character images from within the page are implemented. Methods to trace joinings in closely spaced letters are discussed. Preprocessing of the extracted image by skeleton extraction (using average area) is implemented to remove font specific factors such as bold and line thickening. After specification of the reduced image size required, the image is compressed with the necessary amount by a pixel averaging and overlapping routine for better context sensitivity. The reduced images are used to train multiple MLP neural networks each for a single font using the back propagation training algorithm. The outputs of the networks are combined to form a maximum likelihood search for the best match. Results close to 100% are obtainable
Keywords :
backpropagation; feature extraction; feedforward neural nets; maximum likelihood estimation; optical character recognition; search problems; back propagation training algorithm; context sensitivity; image compression; maximum likelihood search; multiple MLP neural networks; omnifont character recognition; pixel averaging and overlapping routine; skeleton extraction; templates; Character recognition; Costs; Facsimile; Graphics; Image coding; Neural networks; Optical character recognition software; Optical sensors; Pixel; Skeleton;
Conference_Titel :
Communications and Signal Processing, 1992. COMSIG '92., Proceedings of the 1992 South African Symposium on
Conference_Location :
Cape Town
Print_ISBN :
0-7803-0807-7
DOI :
10.1109/COMSIG.1992.274275