Zhang Kang, Huang Shu, Liu Eryun, Zhao Heng
Engineering Research Centre of Molecular & Neuro Imaging of the Ministry of Education, School of Life Science and Technology, Xidian University, Xi'an 710071, China.
Zhejiang Provincial Key Laboratory of Information Network Technology, College of Information Science & Electronic Engineering, Zhejiang University, Hangzhou 310027, China.
Sensors (Basel). 2023 Aug 1;23(15):6854. doi: 10.3390/s23156854.
With the rapid development of fingerprint recognition systems, fingerprint liveness detection is gradually becoming regarded as the main countermeasure to protect the fingerprint identification system from spoofing attacks. Convolutional neural networks have shown great potential in fingerprint liveness detection. However, the generalization ability of the deep network model for unknown materials, and the computational complexity of the network, need to be further improved. A new lightweight fingerprint liveness detection network is here proposed to distinguish fake fingerprints from real ones. The method includes mainly foreground extraction, fingerprint image blocking, style transfer based on CycleGan and an improved ResNet with multi-head self-attention mechanism. The proposed method can effectively extract ROI and obtain the end-to-end data structure, which increases the amount of data. For false fingerprints generated from unknown materials, the use of CycleGan network improves the model generalization ability. The introduction of Transformer with MHSA in the improved ResNet improves detection performance and reduces computing overhead. Experiments on the LivDet2011, LivDet2013 and LivDet2015 datasets showed that the proposed method achieves good results. For example, on the LivDet2015 dataset, our methods achieved an average classification error of 1.72 across all sensors, while significantly reducing network parameters, and the overall parameter number was only 0.83 M. At the same time, the experiment on small-area fingerprints yielded an accuracy of 95.27%.
随着指纹识别系统的快速发展,指纹活体检测逐渐被视为保护指纹识别系统免受伪造攻击的主要对策。卷积神经网络在指纹活体检测中已显示出巨大潜力。然而,深度网络模型对未知材料的泛化能力以及网络的计算复杂度仍需进一步提高。本文提出了一种新的轻量级指纹活体检测网络,用于区分假指纹和真指纹。该方法主要包括前景提取、指纹图像分块、基于CycleGan的风格迁移以及带有多头自注意力机制的改进ResNet。所提出的方法能够有效地提取感兴趣区域(ROI)并获得端到端的数据结构,从而增加了数据量。对于由未知材料生成的假指纹,使用CycleGan网络提高了模型的泛化能力。在改进的ResNet中引入带有多头自注意力机制(MHSA)的Transformer提高了检测性能并降低了计算开销。在LivDet2011、LivDet2013和LivDet2015数据集上的实验表明,所提出的方法取得了良好的结果。例如,在LivDet2015数据集上,我们的方法在所有传感器上的平均分类误差为1.72,同时显著减少了网络参数,总参数数量仅为0.83M。同时,在小面积指纹上的实验准确率达到了95.27%。