Zhongkang Lu, Zheru Chi, Wan-Chi Siu
Journal of Electronic Imaging, Vol. 7, Issue 01, (January 1998) https://doi.org/10.1117/1.482629
TOPICS: Neural networks, Feature extraction, Detection and tracking algorithms, Image segmentation, Databases, Fuzzy logic, Binary data, Optical character recognition, Stochastic processes, Mathematical morphology
Accurate length estimation is very helpful for the successful segmentation and recognition of connected digit strings, in particular, for an off-line recognition system. However, little work has been done in this area due to the difficulties involved. A length estimation approach is presented as a part of our automatic off-line digit recognition system. The kernel of our approach is a neural network estimator with a set of structure-based features as the inputs. The system outputs are a set of fuzzy membership grades
reflecting the degrees of an input digit string of having different lengths. Experimental results on National Institute of Standards and Technology (NIST) Special Database 3 and other derived digit strings shows that our approach can achieve an about 99.4% correct estimation if the best two estimations are considered.