用于手指静脉呈现攻击检测的可转移深度卷积神经网络特征

Ramachandra Raghavendra, S. Venkatesh, K. Raja, C. Busch
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引用次数: 28

摘要

针对指静脉生物识别捕获设备的表示攻击(或欺骗)越来越受到关注,因为它们在多种安全应用中得到了更广泛的部署。在这项工作中。我们通过探索深度卷积神经网络(CNN)的迁移学习能力,提出了一种新的手指静脉呈现攻击检测(PAD)方法。为此,我们考虑了预训练的Alex-Net体系结构,并在现有体系结构的基础上增加了7层,以提高可靠性并减少过拟合问题。然后,我们用手指静脉表示攻击样本对修改后的CNN架构进行微调,使其适应手指静脉表示攻击检测(PAD)。利用两种不同类型的打印机生成的两种不同的手静脉伪迹,利用两种不同的手静脉呈现攻击数据库进行了大量的实验。实验结果表明,该方法在两个数据库上都具有一致的高性能,进一步证明了该方法的鲁棒性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Transferable deep convolutional neural network features for fingervein presentation attack detection
Presentation attacks (or spoofing) on finger-vein biometric capture devices are gaining increased attention because of their wider deployment in multiple secure applications. In this work. we propose a novel method for fingervein Presentation Attack Detection (PAD) by exploring the transfer learning ability of Deep Convolutional Neural Network (CNN). To this extent, we have considered the pre-trained Alex-Net architecture and augmented the existing architecture with additional seven layers to improve the reliability and reduce over-fitting problem. We then fine-tune the modified CNN architecture with the fingervein presentation attack samples to make it adaptable to fingervein Presentation Attack Detection (PAD). Extensive experiments are carried out using two different fingervein presentation attack databases with two different fingervein artefact species generated using two different kinds of printers. Obtained results show consistently high performance of the proposed scheme on both databases that further indicate the robustness and efficiency.
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