Title of article :
Optimized biometric system based iris-signature for human identification
Author/Authors :
Hamd , Muthana Hachim Comp uter Engineering Dept. - Mustansiriyah University - Baghdad, Iraq
Pages :
12
From page :
273
To page :
284
Abstract :
This research aimed at comparing iris-signature techniques, namely the Sequential Technique (ST) and the Standard Deviation Technique (SDT). Both techniques were measured by Backpropagation (BP), Probabilistic, Radial basis function (RBF), and Euclidian distance (ED) classifiers. A biometric system-based iris is developed to identify 30 of CASIA-v1 and 10 subjects from the Real-iris datasets. Then, the proposed unimodal system uses Fourier descriptors to extract the iris features and represent them as an iris-signature graph. The 150 values of input machine vector were optimized to include only high-frequency coefficients of the iris-signature, then the two optimization techniques are applied and compared. The first optimization (ST) selects sequentially new feature values with different lengths from the enrichment graph region that has rapid frequency changes. The second technique (SDT) chooses the high variance coefficients as a new feature of vectors based on the standard deviation formula. The results show that SDT achieved better recognition performance with the lowest vector-lengths, while Probabilistic and BP have the best accuracy.
Keywords :
Optimization techniques , Neural network , Iris-Signature , Fourier descriptors , Iris recognition
Journal title :
International Journal of Advances in Intelligent Informatics
Serial Year :
2019
Full Text URL :
Record number :
2601025
Link To Document :
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