Uniqueness of Iris Pattern Based on AR Model
Katelyn M. Hampel, Jinyu Zuo, Priyanka Das, Natalia A. Schmid,, Stephanie Schuckers, Joseph Skufca, and Matthew C. Valenti

TL;DR
This paper introduces a new method to evaluate iris recognition system scalability and iris quality by applying sphere-packing bounds and relative entropy, building on Daugman's approach and previous rate-distortion theory work.
Contribution
It proposes a novel methodology combining sphere-packing bounds and relative entropy to assess iris system scalability and quality, extending prior theoretical frameworks.
Findings
Determined maximum iris class populations based on image quality.
Applied the methodology to two iris datasets to illustrate its effectiveness.
Provided insights into system limitations related to iris database quality.
Abstract
The assessment of iris uniqueness plays a crucial role in analyzing the capabilities and limitations of iris recognition systems. Among the various methodologies proposed, Daugman's approach to iris uniqueness stands out as one of the most widely accepted. According to Daugman, uniqueness refers to the iris recognition system's ability to enroll an increasing number of classes while maintaining a near-zero probability of collision between new and enrolled classes. Daugman's approach involves creating distinct IrisCode templates for each iris class within the system and evaluating the sustainable population under a fixed Hamming distance between codewords. In our previous work [23], we utilized Rate-Distortion Theory (as it pertains to the limits of error-correction codes) to establish boundaries for the maximum possible population of iris classes supported by Daugman's IrisCode, given…
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Taxonomy
TopicsBiometric Identification and Security
