Iris Recognition using Hamming Distance and Neural Network

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Presentation transcript:

Iris Recognition using Hamming Distance and Neural Network Soud Al-Raihan, Md. Ahsanul Kabir Proposal : Introduction : Working with zigzag collarette area of iris Neural Network Iris is the most reliable and accurate among all biometric traits . Iris Pupil Sclera rgb2grey Iris Localization Original RGB Image Grey Level Image Zigzag collarette area localization Different parts of Iris : Collarette Ciliary zone Pupilliary zone 010101010101 101001011011 1 Iris Recognition System r θ 1 Mission and Vision : Scability Accuracy Process 2 : Neural network Department of Computer Science and Engineering (CSE), BUET