TL;DR
This paper demonstrates that domain-specific BSIF filters trained on eye-tracking data improve iris recognition performance over generic filters, emphasizing the importance of task-specific patch selection.
Contribution
It introduces domain-specific BSIF filters trained on eye-tracking data and shows task-guided patch selection enhances iris recognition accuracy.
Findings
Domain-specific BSIF outperforms generic BSIF.
Task-specific patch selection improves performance.
Reproducible research materials are provided.
Abstract
Binarized statistical image features (BSIF) have been successfully used for texture analysis in many computer vision tasks, including iris recognition and biometric presentation attack detection. One important point is that all applications of BSIF in iris recognition have used the original BSIF filters, which were trained on image patches extracted from natural images. This paper tests the question of whether domain-specific BSIF can give better performance than the default BSIF. The second important point is in the selection of image patches to use in training for BSIF. Can image patches derived from eye-tracking experiments, in which humans perform an iris recognition task, give better performance than random patches? Our results say that (1) domain-specific BSIF features can out-perform the default BSIF features, and (2) selecting image patches in a task-specific manner guided by…
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