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IRIS RECOGNITION SYSTEM
By: - Deepak Attarde Mayank Gupta Vishwanath Srinivasan Guided by: - Dr. Aditya Abhyankar
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BIOMETRIC SECURITY Modern and reliable method Hard to breach
Wide range Why Iris Recognition Highly protected and stable, template size is small and image encoding and matching is relatively fast.
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INTRODUCTION TO IRIS RECOGNITION
Sharbat Gula – aged 12 at Afghani refugee camp. 18 years later at a remote location in Afghanistan. John Daugman, University of Cambridge – Pioneer in Iris Recognition.
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OVERVIEW OF OUR SYSTEM
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SEGMENTATION Canny Edge Detection Algorithm Detecting the pupil edges
Detecting the iris edges Extracting the iris region Canny Edge Detection Algorithm
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NORMALISATION Daugman’s Rubber Sheet Model:
Variations in eye: Optical size (iris), position (pupil), Orientation (iris). Fixed Dimension, Cartesian co-ordinates to Polar co-ordinates. Daugman’s Rubber Sheet Model: (R, theta) to unwrap iris and easily generate a template code.
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FEATURE EXTRACTION AND MATCHING
Generate a template code along with a mask code. Compare 2 iris templates using Hamming distances. Shifting of Hamming distances: To counter rotational inconsistencies. <0.32: Iris Match >0.32: Not a Match
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RESULTS AND CASE STUDIES
FAR, FRR EER: 18.3 % which gives an accuracy close to 82% ROC: Receiver Operator Characteristics
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Advantages Uniqueness of iris patterns hence improved accuracy.
Highly protected, internal organ of the eye Stability : Persistence of iris patterns. Non-invasive : Relatively easy to be acquired. Speed : Smaller template size so large databases can be easily stored and checked. Cannot be easily forged or modified.
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Concerns / Possible improvements
High cost of implementation Person has to be “physically” present. Capture images independent of surroundings and environment / Techniques for dark eyes. Non-ideal iris images Inconsistent Iris size Pupil Dilation Eye Rotation
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THANK YOU!!!
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