IT Research Institute, Chosun University, Gwangju 61452, Korea.
Department of Computer Science, William Paterson University of New Jersey, Wayne, NJ 07470, USA.
Sensors (Basel). 2020 Dec 30;21(1):202. doi: 10.3390/s21010202.
Driver-centered infotainment and telematics services are provided for intelligent vehicles that improve driver convenience. Driver-centered services are performed after identification, and a biometrics system using bio-signals is applied. The electrocardiogram (ECG) signal acquired in the driving environment needs to be normalized because the intensity of noise is strong because the driver's motion artifact is included. Existing time, frequency, and phase normalization methods have a problem of distorting P, QRS Complexes, and T waves, which are morphological features of an ECG, or normalizing to signals containing noise. In this paper, we propose an adaptive threshold filter-based driver identification system to solve the problem of distortion of the ECG morphological features when normalized and the motion artifact noise of the ECG that causes the identification performance deterioration in the driving environment. The experimental results show that the proposed method improved the average similarity compared to the results without normalization. The identification performance was also improved compared to the results before normalization.
为提高驾驶员便利性,为智能车辆提供以驾驶员为中心的信息娱乐和远程信息处理服务。驾驶员为中心的服务是在识别后执行的,并应用了使用生物信号的生物特征系统。由于驾驶员运动伪影的存在,驾驶环境中获取的心电图 (ECG) 信号需要进行归一化处理,因为噪声的强度很强。现有的时间、频率和相位归一化方法存在一个问题,即会扭曲 ECG 的 P、QRS 复合体和 T 波等形态特征,或者将信号归一化为包含噪声的信号。在本文中,我们提出了一种基于自适应阈值滤波器的驾驶员识别系统,以解决 ECG 形态特征在归一化时的失真问题,以及在驾驶环境中导致识别性能恶化的 ECG 运动伪影噪声问题。实验结果表明,与未归一化的结果相比,所提出的方法提高了平均相似度。与归一化前的结果相比,识别性能也得到了提高。