• Corpus ID: 5624281

Improving Iris Recognition Accuracy By Score Based Fusion Method

@article{Gawande2010ImprovingIR,
  title={Improving Iris Recognition Accuracy By Score Based Fusion Method},
  author={Ujwalla Haridas Gawande and Mukesh A. Zaveri and Avichal R. Kapur},
  journal={ArXiv},
  year={2010},
  volume={abs/1007.0412}
}
Iris recognition technology, used to identify individuals by photographing the iris of their eye, has become popular in security applications because of its ease of use, accuracy, and safety in controlling access to high-security areas. Fusion of multiple algorithms for biometric verification performance improvement has received considerable attention. The proposed method combines the zero-crossing 1 D wavelet Euler number, and genetic algorithm based for feature extraction. The output from… 

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