anweshachakraborty17 / Iris-Recognition-Using-MATLAB
Iris recognition is a reliable and accurate biometric identification system for user authentication. It is used for capturing an image of an individual’s eye. The performance of iris recognition systems is measured using segmentation. Segmentation is used to localize the correct iris region in the particular portion of an eye and it should be do…
☆12Updated 4 years ago
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