Fingerprint Presentation Attack Detection: A Sensor and Material
Agnostic Approach
- URL: http://arxiv.org/abs/2004.02941v1
- Date: Mon, 6 Apr 2020 19:03:05 GMT
- Title: Fingerprint Presentation Attack Detection: A Sensor and Material
Agnostic Approach
- Authors: Steven A. Grosz, Tarang Chugh, Anil K. Jain
- Abstract summary: We propose a robust presentation attack detection (PAD) solution with improved cross-material and cross-sensor generalization.
Specifically, we build on any CNN-based architecture trained for fingerprint spoof detection combined with cross-material spoof generalization.
We also incorporate adversarial representation learning (ARL) in deep neural networks (DNN) to learn sensor and material invariant representations for PAD.
- Score: 44.46178415547532
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The vulnerability of automated fingerprint recognition systems to
presentation attacks (PA), i.e., spoof or altered fingers, has been a growing
concern, warranting the development of accurate and efficient presentation
attack detection (PAD) methods. However, one major limitation of the existing
PAD solutions is their poor generalization to new PA materials and fingerprint
sensors, not used in training. In this study, we propose a robust PAD solution
with improved cross-material and cross-sensor generalization. Specifically, we
build on top of any CNN-based architecture trained for fingerprint spoof
detection combined with cross-material spoof generalization using a style
transfer network wrapper. We also incorporate adversarial representation
learning (ARL) in deep neural networks (DNN) to learn sensor and material
invariant representations for PAD. Experimental results on LivDet 2015 and 2017
public domain datasets exhibit the effectiveness of the proposed approach.
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