Cascading statistical and structural classifiers for iris recognition

Reliable human identification using iris pattern has recently gained growing interests from pattern recognition researchers. In literature of iris recognition, almost all algorithms are based on statistical information. In this paper, a structural iris image analysis method is proposed, which provides complementary information to statistical classifier. In order to save computational cost, the structural matcher is not consulted unless the statistical classifier is uncertain of its decision. At the second stage, the structural classifier may be combined with statistical classifier with different fusion strategies. The experimental results of decision-level classifiers combination are reported, which demonstrate that the cascaded classification system significantly outperforms single classifier.

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