Transfer learning using deep neural networks for Ear Presentation Attack
Detection: New Database for PAD
- URL: http://arxiv.org/abs/2112.05237v1
- Date: Thu, 9 Dec 2021 22:34:26 GMT
- Title: Transfer learning using deep neural networks for Ear Presentation Attack
Detection: New Database for PAD
- Authors: Jalil Nourmohammadi Khiarak
- Abstract summary: There is no publicly available ear presentation attack detection (PAD) database.
We propose a PAD method using a pre-trained deep neural network and release a new dataset called Warsaw University of Technology Ear for Presentation Attack Detection (WUT-Ear V1.0)
We have captured more than 8500 genuine ear images from 134 subjects and more than 8500 fake ear images using.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Ear recognition system has been widely studied whereas there are just a few
ear presentation attack detection methods for ear recognition systems,
consequently, there is no publicly available ear presentation attack detection
(PAD) database. In this paper, we propose a PAD method using a pre-trained deep
neural network and release a new dataset called Warsaw University of Technology
Ear Dataset for Presentation Attack Detection (WUT-Ear V1.0). There is no ear
database that is captured using mobile devices. Hence, we have captured more
than 8500 genuine ear images from 134 subjects and more than 8500 fake ear
images using. We made replay-attack and photo print attacks with 3 different
mobile devices. Our approach achieves 99.83% and 0.08% for the half total error
rate (HTER) and attack presentation classification error rate (APCER),
respectively, on the replay-attack database. The captured data is analyzed and
visualized statistically to find out its importance and make it a benchmark for
further research. The experiments have been found out a secure PAD method for
ear recognition system, publicly available ear image, and ear PAD dataset. The
codes and evaluation results are publicly available at
https://github.com/Jalilnkh/KartalOl-EAR-PAD.
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