In recent years, physiological signal based authentication has shown great promises,for its inherent robustness against forgery. Electrocardiogram (ECG) signal, being the most widely studied biosignal, has also received the highest level of attention in this regard. It has been proven with numerous studies that by analyzing ECG signals from different persons, it is possible to identify them, with acceptable accuracy. In this work, we present, EDITH, a deep learning-based framework for ECG biometrics authentication system. Moreover, we hypothesize and demonstrate that Siamese architectures can be used over typical distance metrics for improved performance. We have evaluated EDITH using 4 commonly used datasets and outperformed the prior works using less number of beats. EDITH performs competitively using just a single heartbeat (96-99.75% accuracy) and can be further enhanced by fusing multiple beats (100% accuracy from 3 to 6 beats). Furthermore, the proposed Siamese architecture manages to reduce the identity verification Equal Error Rate (EER) to 1.29%. A limited case study of EDITH with real-world experimental data also suggests its potential as a practical authentication system.
翻译:近年来,基于生理信号的认证显示出了巨大的希望,因为它具有防止伪造的内在强健性。电动心电图(ECG)信号是研究最广泛的生物信号信号,在这方面也得到了最高程度的注意。许多研究证明,通过分析不同人士的ECG信号,有可能以可接受的准确性来识别这些信号。在这项工作中,我们介绍EDITH,一个ECG生物鉴别认证系统的深层次学习框架。此外,我们假设并表明,西亚结构可以超过典型的距离测量标准,用于改进性能。我们用4个常用数据集对EDITH进行了评估,并用较少的节拍来比先前的作品。EDITH只使用单一的心跳(96-99.75 % 精度)进行竞争性的演练,还可以通过使用多重拍子(100%的精确度从3节到6节)来进一步加强这些信号。此外,拟议的Siames结构可以将身份核查平均错误率降低到1.29 % 。对EDITH进行有限的案例研究,用现实世界实验数据也表明其潜力是一个实际的认证系统。