Saliency-Guided Training for Fingerprint Presentation Attack Detection
Journal:
arXiv
Published Date:
May 4, 2025
Abstract
Saliency-guided training, which directs model learning to important regions
of images, has demonstrated generalization improvements across various
biometric presentation attack detection (PAD) tasks. This paper presents its
first application to fingerprint PAD. We conducted a 50-participant study to
create a dataset of 800 human-annotated fingerprint perceptually-important
maps, explored alongside algorithmically-generated "pseudosaliency," including
minutiae-based, image quality-based, and autoencoder-based saliency maps.
Evaluating on the 2021 Fingerprint Liveness Detection Competition testing set,
we explore various configurations within five distinct training scenarios to
assess the impact of saliency-guided training on accuracy and generalization.
Our findings demonstrate the effectiveness of saliency-guided training for
fingerprint PAD in both limited and large data contexts, and we present a
configuration capable of earning the first place on the LivDet-2021 benchmark.
Our results highlight saliency-guided training's promise for increased model
generalization capabilities, its effectiveness when data is limited, and its
potential to scale to larger datasets in fingerprint PAD. All collected
saliency data and trained models are released with the paper to support
reproducible research.