研究目的
To develop an efficient iris recognition system that reduces computation time, database size, and increases recognition accuracy compared to existing methods, using neural network-based classification.
研究成果
The proposed iris recognition system using RBFNN achieves high recognition rates (97% for CASIA v1.0 and 95% for CASIA v4.0) with reduced computation time and complexity compared to existing methods. It demonstrates effectiveness in biometric identification, with potential applications in security and authentication systems. Future improvements could involve handling environmental variations better.
研究不足
The method may be affected by specular reflections and occlusions like eyelids and eyelashes in the iris images, and performance varies between different database versions (e.g., CASIA v1.0 vs. v4.0). Future work could address constraints in different environments.
1:Experimental Design and Method Selection:
The methodology involves a five-step process: image pre-processing, segmentation, normalization, feature extraction, and classification using feed-forward neural network (FNN) and radial basis function neural network (RBFNN). K-means clustering is used for pattern classification, and circular Hough transform for segmentation.
2:Sample Selection and Data Sources:
The CASIA iris database versions
3:0 and 0 are used, containing 756 and 2639 iris images respectively, captured with specific resolutions and conditions. List of Experimental Equipment and Materials:
MATLAB R2014a software for implementation; no specific hardware mentioned.
4:Experimental Procedures and Operational Workflow:
Steps include pre-processing with gamma correction, segmentation using integro-differential operator and Hough transform, normalization with Daugman's rubber sheet model, feature extraction with log-Gabor filter, and classification with FNN and RBFNN.
5:Data Analysis Methods:
Performance is evaluated based on recognition rates and computation time, using metrics like mean square error (MSE) and regression plots.
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