DeformIrisNet: An Identity-Preserving Model of Iris Texture Deformation
Siamul Karim Khan, Patrick Tinsley, Adam Czajka

TL;DR
DeformIrisNet is a deep autoencoder model that learns complex iris texture deformations caused by pupil size changes, improving iris recognition accuracy and aiding forensic comparisons.
Contribution
It introduces a novel deep autoencoder approach that models nonlinear iris texture deformations directly from data, surpassing traditional biomechanical models.
Findings
Better compensation for iris deformations in recognition systems
Generates realistic iris images for forensic analysis
Preserves identity during deformation modeling
Abstract
Nonlinear iris texture deformations due to pupil size variations are one of the main factors responsible for within-class variance of genuine comparison scores in iris recognition. In dominant approaches to iris recognition, the size of a ring-shaped iris region is linearly scaled to a canonical rectangle, used further in encoding and matching. However, the biological complexity of the iris sphincter and dilator muscles causes the movements of iris features to be nonlinear in a function of pupil size, and not solely organized along radial paths. Alternatively to the existing theoretical models based on the biomechanics of iris musculature, in this paper we propose a novel deep autoencoder-based model that can effectively learn complex movements of iris texture features directly from the data. The proposed model takes two inputs, (a) an ISO-compliant near-infrared iris image with initial…
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Code & Models
Videos
DeformIrisNet: An Identity-Preserving Model of Iris Texture Deformation· youtube
Taxonomy
TopicsBiometric Identification and Security
