Computer Science Department, College of Computer and Information Sciences, King Saud University, Riyadh 11543, Saudi Arabia.
Computer Engineering Department, College of Computer and Information Sciences, King Saud University, Riyadh 11543, Saudi Arabia.
Sensors (Basel). 2020 Apr 7;20(7):2085. doi: 10.3390/s20072085.
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.
虽然基于指纹的系统是常用的生物识别系统,但它们存在着对呈现攻击 (PA) 脆弱的关键漏洞。因此,已经开发了几种基于指纹生物识别的方法来提高对 PA 的鲁棒性。我们提出了一种基于指纹和心电图 (ECG) 信号相结合的替代方法。ECG 信号具有防止复制的优势特征。将指纹与 ECG 信号相结合是减少生物识别系统中 PA 影响的一种潜在有趣的解决方案。我们还提出了一种新颖的基于端到端深度学习的融合神经架构,用于提高指纹生物识别中的 PA 检测。我们的模型使用最先进的高效网络来生成指纹特征表示。对于 ECG,我们研究了基于全连接层 (FC)、一维卷积神经网络 (1D-CNN) 和二维卷积神经网络 (2D-CNN) 的三种不同架构。2D-CNN 将 ECG 信号转换为图像,并使用 Inverted Mobilenet-v2 层进行特征生成。我们在一个多模态数据集上评估了该方法,即 LivDet 2015 指纹数据集和来自真实受试者的 ECG 数据的定制融合。实验结果表明,与单一指纹模态相比,该架构产生了更好的平均分类准确性。