Off-line signature verification using genetically optimized weighted features

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This paper is concerned with off-line signature verification. Four different types of pattern representation schemes have been implemented, viz., geometric features, moment-based representations, envelope characteristics and tree-structured Wavelet features. The individual feature components in a representation are weighed by their pattern characterization capability using Genetic Algorithms. The conclusions of the four subsystems (each depending on a representation scheme) are combined to form a final decision on the validity of signature. Threshold-based classifiers (including the traditional confidence-interval classifier), neighbourhood classifiers and their combinations were studied. Benefits of using forged signatures for training purposes have been assessed. Experimental results show that combination of the feature-based classifiers increases verification accuracy.

论文关键词:Off-line signature verification,Genetic algorithms,Tree-structured wavelets,Threshold-based classifiers,Neighbourhood classifiers,Hybrid classifier,Combination of classifiers

论文评审过程:Received 6 April 1998, Revised 14 September 1998, Accepted 14 September 1998, Available online 7 June 2001.

论文官网地址:https://doi.org/10.1016/S0031-3203(98)00141-1