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 a 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. The source code is available at https://github.com/kongzhecn/cfd-pad.
翻译:由于攻击材料的多样性,指纹识别系统(AFRS)很容易受到恶意攻击。 因此, 有必要为AFRS的安全性和可靠性提出有效的指纹显示攻击检测(PAD)方法。 但是, 在新的攻击类型设置下, 目前的 PAD 方法往往显示不强。 本文因此提出一种全新的频道特征, 通过处理先前研究中忽略的多余噪音信息来消除指纹 PAD(CFD-PAD) (CF- PAD) 。 拟议的方法通过权衡每个频道的重要性和识别歧视性渠道和“噪音”频道来了解指纹图像的重要特征。 然后, 功能地图上禁止“ 声音” 频道的传播,以减少干扰。 具体地说, PA- ADADR 丢失功能分配方式, 使现场指纹的分布更加完整和指纹的分布更加分散。 LivDFDS 数据集的实验结果评估显示, 以 CFDA为基础的模式可以达到2.53%的平均分类错误(ACE) 和以93.83% 真实的检测率, 当错误检测率等于1.0% (TDRF_DR=1.% 方法, 。</s>