Department of Biomedical Engineering, Hanyang University, Seoul 04763, Korea.
Information Security Research Division, Electronics and Telecommunications Research Institute (ETRI), Daejeon 34129, Korea.
Sensors (Basel). 2021 Oct 20;21(21):6966. doi: 10.3390/s21216966.
The development and use of wearable devices require high levels of security and have sparked interest in biometric authentication research. Among the available approaches, electrocardiogram (ECG) technology is attracting attention because of its strengths in spoofing. However, morphological changes of ECG, which are affected by physical and psychological factors, can make authentication difficult. In this paper, we propose authentication using non-linear normalization of ECG beats that is robust to changes in ECG waveforms according to heart rate fluctuations in various daily activities. We performed a non-linear normalization method through the analysis of ECG alongside heart rate, evaluating similarities and authenticating the performance of our new method compared to existing methods. Compared with beats before normalization, the average similarity of the proposed method increased 23.7% in the resting state and 43% in the non-resting state. After learning in the resting state, authentication performance reached 99.05% accuracy for the resting state and 88.14% for the non-resting state. The proposed method can be applicable to an ECG-based authentication system under various physiological conditions.
可穿戴设备的开发和使用需要高度的安全性,这激发了人们对生物识别认证研究的兴趣。在现有的方法中,心电图(ECG)技术因其在欺骗方面的优势而受到关注。然而,心电图的形态变化受到生理和心理因素的影响,这使得认证变得困难。在本文中,我们提出了一种使用心电图节拍的非线性归一化进行认证的方法,该方法根据各种日常活动中心率波动对心电图波形的变化具有鲁棒性。我们通过分析心电图和心率来执行非线性归一化方法,评估相似性并验证我们的新方法与现有方法的性能。与归一化前的节拍相比,在静息状态下,所提出方法的平均相似度提高了 23.7%,在非静息状态下提高了 43%。在静息状态下学习后,静息状态下的认证性能达到 99.05%,非静息状态下达到 88.14%。该方法可适用于各种生理条件下基于心电图的认证系统。