As a non-invasive optical imaging technique, optical coherence tomography (OCT) has proven promising for automatic fingerprint recognition system (AFRS) applications. Diverse approaches have been proposed for OCT-based fingerprint presentation attack detection (PAD). However, considering the complexity and variety of PA samples, it is extremely challenging to increase the generalization ability with the limited PA dataset. To solve the challenge, this paper presents a novel supervised learning-based PAD method, denoted as ISAPAD, which applies prior knowledge to guide network training and enhance the generalization ability. The proposed dual-branch architecture can not only learns global features from the OCT image, but also concentrate on layered structure feature which comes from the internal structure attention module (ISAM). The simple yet effective ISAM enables the proposed network to obtain layered segmentation features belonging only to Bonafide from noisy OCT volume data directly. Combined with effective training strategies and PAD score generation rules, ISAPAD obtains optimal PAD performance in limited training data. Domain generalization experiments and visualization analysis validate the effectiveness of the proposed method for OCT PAD.
翻译:作为一种非侵入性的光学成像技术,光学相干断层扫描(OCT)已被证明在自动指纹识别系统(AFRS)应用中具有良好的前景。已经提出了各种方法用于基于OCT的指纹表现攻击检测(PAD)。然而,考虑到PA样本的复杂性和多样性,在有限的PA数据集上增加泛化能力是极具挑战性的。为了解决这一挑战,本文提出了一种新型的有监督学习的PAD方法,称为ISAPAD,它应用先验知识来指导网络训练并增强泛化能力。所提出的双分支架构不仅可以从OCT图像学习全局特征,而且可以集中于来自内部结构注意力模块(ISAM)的分层结构特征。简单而有效的ISAM使得所提出的网络能够直接从嘈杂的OCT体积数据中获得仅属于Bonafide的分层分割特征。结合有效的训练策略和PAD评分生成规则,ISAPAD在有限的训练数据中获得了最佳的PAD性能。域泛化实验和可视化分析验证了该方法在OCT PAD中的有效性。