Topological Invariant-Based Iris Identification via Digital Homology and Machine Learning
Ahmet \"Oztel, \.Ismet Karaca

TL;DR
This paper introduces a novel iris recognition method using digital homology-based topological invariants, achieving high accuracy and interpretability, and outperforming CNNs in classification tasks.
Contribution
It is the first to apply topological invariants from digital homology for iris recognition, providing a compact and explainable alternative to deep learning methods.
Findings
Logistic regression achieved 97.78% accuracy.
Topological features outperformed CNN in accuracy.
Method is efficient and interpretable for security applications.
Abstract
Objective - This study presents a biometric identification method based on topological invariants from 2D iris images, representing iris texture via formally defined digital homology and evaluating classification performance. Methods - Each normalized iris image (48x482 pixels) is divided into grids (e.g., 6x54 or 3x27). For each subregion, we compute Betti0, Betti1, and their ratio using a recent algorithm for homology groups in 2D digital images. The resulting invariants form a feature matrix used with logistic regression, KNN, and SVM (with PCA and 100 randomized repetitions). A convolutional neural network (CNN) is trained on raw images for comparison. Results - Logistic regression achieved 97.78 +/- 0.82% accuracy, outperforming CNN (96.44 +/- 1.32%) and other feature-based models. The topological features showed high accuracy with low variance. Conclusion - This is the first…
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