학술논문

Learning Joint Local-Global Iris Representations via Spatial Calibration for Generalized Presentation Attack Detection
Document Type
Periodical
Source
IEEE Transactions on Biometrics, Behavior, and Identity Science IEEE Trans. Biom. Behav. Identity Sci. Biometrics, Behavior, and Identity Science, IEEE Transactions on. 6(2):195-208 Apr, 2024
Subject
Bioengineering
Computing and Processing
Communication, Networking and Broadcast Technologies
Components, Circuits, Devices and Systems
Tablet computers
Iris recognition
Feature extraction
Calibration
Lenses
Convolution
Deep learning
Feature calibration
iris-spoofing
channel attention
Language
ISSN
2637-6407
Abstract
Existing Iris Presentation Attack Detection (IPAD) systems do not generalize well across datasets, sensors and subjects. The main reason for the same is the presence of similarities in bonafide samples and attacks, and intricate iris textures. The proposed DFCANet (Dense Feature Calibration Attention-Assisted Network) uses feature calibration convolution and residual learning to generate domain-specific iris feature representations at local and global scales. DFCANet’s channel attention enables the use of discriminative feature learning across channels. Compared to state-of-the-art methods, DFCANet achieves significant performance gains for the IIITD-CLI, IIITD-WVU, IIIT-CSD, Clarkson-15, Clarkson-17, NDCLD-13, and NDCLD-15 benchmark datasets. Incremental learning in DFCANet overcomes data scarcity issues and cross-domain challenges. This paper also pursues the challenging soft-lens attack scenarios. An additional study conducted over contact lens detection task suggests high domain-specific feature modeling capacities of the proposed network.