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End-to-End Deep Learning Fusion of Fingerprint and Electrocardiogram Signals for Presentation Attack Detection

机译:指纹和心电图信号的端到端深度学习融合用于演示攻击检测

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摘要

Although fingerprint-based systems are the commonly used biometric systems, they suffer from a critical vulnerability to a presentation attack (PA). Therefore, several approaches based on a fingerprint biometrics have been developed to increase the robustness against a PA. We propose an alternative approach based on the combination of fingerprint and electrocardiogram (ECG) signals. An ECG signal has advantageous characteristics that prevent the replication. Combining a fingerprint with an ECG signal is a potentially interesting solution to reduce the impact of PAs in biometric systems. We also propose a novel end-to-end deep learning-based fusion neural architecture between a fingerprint and an ECG signal to improve PA detection in fingerprint biometrics. Our model uses state-of-the-art EfficientNets for generating a fingerprint feature representation. For the ECG, we investigate three different architectures based on fully-connected layers (FC), a 1D-convolutional neural network (1D-CNN), and a 2D-convolutional neural network (2D-CNN). The 2D-CNN converts the ECG signals into an image and uses inverted Mobilenet-v2 layers for feature generation. We evaluated the method on a multimodal dataset, that is, a customized fusion of the LivDet 2015 fingerprint dataset and ECG data from real subjects. Experimental results reveal that this architecture yields a better average classification accuracy compared to a single fingerprint modality.
机译:尽管基于指纹的系统是常用的生物识别系统,但它们遭受了表示攻击(PA)的严重漏洞。因此,已经开发了几种基于指纹生物特征的方法来增加针对PA的鲁棒性。我们提出了一种基于指纹和心电图(ECG)信号组合的替代方法。 ECG信号具有防止复制的有利特性。将指纹与ECG信号相结合是减少生物识别系统中PA的影响的潜在有趣解决方案。我们还提出了一种新的基于端到端深度学习的融合指纹和ECG信号之间的融合神经架构,以改善指纹生物识别技术中的PA检测。我们的模型使用最新的EfficientNets来生成指纹特征表示。对于ECG,我们研究了基于完全连接层(FC),1D卷积神经网络(1D-CNN)和2D卷积神经网络(2D-CNN)的三种不同架构。 2D-CNN将ECG信号转换为图像,并使用反转的Mobilenet-v2层进行特征生成。我们在多峰数据集上评估了该方法,即,LivDet 2015指纹数据集与来自真实受试者的ECG数据的定制融合。实验结果表明,与单指纹模式相比,该体系结构具有更好的平均分类精度。

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