Evaluation of PPG Biometrics for Authentication in Different States

Umang Yadav, S. N. Abbas, D. Hatzinakos
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引用次数: 52

Abstract

Amongst all medical biometric traits, Photoplethysmograph (PPG) is the easiest to acquire. PPG records the blood volume change with just combination of Light Emitting Diode and Photodiode from any part of the body. With IoT and smart homes' penetration, PPG recording can easily be integrated with other vital wearable devices. PPG represents peculiarity of hemodynamics and cardiovascular system for each individual. This paper presents nonfiducial method for PPG based biometric authentication. Being a physiological signal, PPG signal alters with physical/mental stress and time. For robustness, these variations cannot be ignored. While, most of the previous works focused only on single session, this paper demonstrates extensive performance evaluation of PPG biometrics against single session data, different emotions, physical exercise and time-lapse using Continuous Wavelet Transform (CWT) and Direct Linear Discriminant Analysis (DLDA). When evaluated on different states and datasets, equal error rate (EER) of 0.5%-6% was achieved for 45-60s average training time. Our CWT/DLDA based technique outperformed all other dimensionality reduction techniques and previous works.
PPG生物识别技术在不同国家的认证评估
在所有医学生物特征中,光容积脉搏波(PPG)是最容易获得的。PPG仅通过发光二极管和光电二极管的组合,记录身体任何部位的血容量变化。随着物联网和智能家居的普及,PPG录音可以很容易地与其他重要的可穿戴设备集成。PPG代表了每个人血液动力学和心血管系统的特殊性。提出了一种基于PPG的非基准生物特征认证方法。PPG信号是一种生理信号,随着生理/心理压力和时间的变化而变化。对于鲁棒性,这些变化不能被忽略。然而,以往的大部分工作只关注单次会话,本文使用连续小波变换(CWT)和直接线性判别分析(DLDA)对单次会话数据、不同情绪、体育锻炼和延时进行了广泛的性能评估。当在不同状态和数据集上进行评估时,平均训练时间为45-60s,误差率(EER)为0.5%-6%。我们基于CWT/DLDA的技术优于所有其他降维技术和以前的工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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