4.7 Article

Fingerprint Presentation Attack Detection by Channel-Wise Feature Denoising

Journal

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TIFS.2022.3197058

Keywords

Feature extraction; Noise reduction; Training; Convolutional neural networks; Computational modeling; Robustness; Location awareness; Presentation attack detection; feature denoising; convolutional neural networks; generalization; domain adaption; PA-Adaptation loss

Funding

  1. National Natural Science Foundation of China [62076163, 91959108]
  2. Shenzhen Fundamental Research Fund [JCYJ20190808163401646]
  3. Tencent Rhinoceros Birds-Scientific Research Foundation for Young Teachers of Shenzhen University

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This paper proposes a channel-wise feature denoising fingerprint presentation attack detection method that learns important features of fingerprint images by weighting the importance of each channel and suppressing the propagation of noise channels. Experimental results show that the proposed method achieves high accuracy and true detection rate.
Due to the diversity of attack materials, fingerprint recognition systems (AFRSs) are vulnerable to malicious attacks. It is thus important to propose effective fingerprint presentation attack detection (PAD) methods for the safety and reliability of AFRSs. However, current PAD methods often exhibit poor robustness under new attack types settings. This paper thus proposes a novel channel-wise feature denoising fingerprint PAD (CFD-PAD) method by handling the redundant noise information ignored in previous studies. The proposed method learns important features of fingerprint images by weighing the importance of each channel and identifying discriminative channels and noise channels. Then, the propagation of noise channels is suppressed in the feature map to reduce interference. Specifically, a PA-Adaptation loss is designed to constrain the feature distribution to make the feature distribution of live fingerprints more aggregate and that of spoof fingerprints more disperse. Experimental results evaluated on the LivDet 2017 dataset showed that the proposed CFD-PAD can achieve 2.53% average classification error (ACE) and a 93.83% true detection rate when the false detection rate equals 1.0% (TDR@FDR=1%). Also, the proposed method markedly outperforms the best single-model-based methods in terms of ACE (2.53% vs. 4.56%) and TDR@FDR=1%(93.83% vs. 73.32%), which demonstrates its effectiveness. Although we have achieved a comparable result with the state-of-the-art multiple-model-based methods, there still is an increase in TDR@FDR=1% from 91.19% to 93.83%. In addition, the proposed model is simpler, lighter and more efficient and has achieved a 74.76% reduction in computation time compared with the state-of-the-art multiple-model-based method.

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