Unsupervised Domain Adaptation for Cross-sensor Pore Detection in High-resolution Fingerprint Images
Vijay Anand, Vivek Kanhangad

TL;DR
This paper introduces DeepDomainPore, a CNN-based method with domain adaptation for cross-sensor pore detection in high-resolution fingerprints, achieving state-of-the-art results on public datasets.
Contribution
It presents a novel deep learning approach with domain adaptation for pore detection across different sensors, addressing a gap in existing methods.
Findings
Achieved 88.12% true detection rate
Reached 83.82% F-score in cross-sensor scenarios
Created a new 1000 dpi fingerprint dataset with pore ground truth
Abstract
With the emergence of high-resolution fingerprint sensors, there has been a lot of focus on level-3 fingerprint features, especially the pores, for the next generation automated fingerprint recognition systems (AFRS). Following the success of deep learning in various computer vision tasks, researchers have developed learning-based approaches for detection of pores in high-resolution fingerprint images. Generally, learning-based approaches provide better performance than handcrafted feature-based approaches. However, domain adaptability of the existing learning-based pore detection methods has never been studied. In this paper, we study this aspect and propose an approach for pore detection in cross-sensor scenarios. For this purpose, we have generated an in-house 1000 dpi fingerprint dataset with ground truth pore coordinates (referred to as IITI-HRFP-GT), and evaluated the performance…
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Taxonomy
TopicsBiometric Identification and Security · Face recognition and analysis · Advanced Neural Network Applications
