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Seventh International Conference on Document Analysis and Recognition (ICDAR'03) - Volume 2
Recognition of Container Code Characters through Gray-Level Feature Extraction and Gradient-Based Classifier Optimization
Edinburgh, Scotland
August 03-August 06
ISBN: 0-7695-1960-1
M. Goccia, University of Genoa
M. Bruzzo, University of Genoa
C. Scagliola, University of Genoa
S. Dellepiane, University of Genoa
This paper describes the recognition of container code characters in the project Mocont-II, where container images are taken in largely varying light situations. The recognition system has to deal with gray-level characters showing a wide variability of brightness and contrast, varying inclination, segmentation uncertainties, damaged characters and the presence of shadows. Different sets of features were extracted directly from gray-level images, and a minimum distance classifier with a weighted metric was used for recognition. To achieve good recognition performances, the feature weights and the prototype sets were optimized by a new gradient-based learning algorithm that maximizes a fuzzy recognition rate functional.
Citation:
M. Goccia, M. Bruzzo, C. Scagliola, S. Dellepiane, "Recognition of Container Code Characters through Gray-Level Feature Extraction and Gradient-Based Classifier Optimization," icdar, vol. 2, pp.973, Seventh International Conference on Document Analysis and Recognition (ICDAR'03) - Volume 2, 2003
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