论文标题
超越常规生物特征界前沿:扩散动力学PPG生物特征
Transcending conventional biometry frontiers: Diffusive Dynamics PPG Biometry
论文作者
论文摘要
在20世纪上半叶,可以使用第一个脉搏血氧仪来测量周围血管网的血流变化。然而,直到最近,光杀菌学(PPG)信号用于监测临床环境中许多生理参数。在过去的十年中,它的使用扩展到生物识别技术领域,其方法具有不同的方法,可以从PPG信号形态中提取特征性特征,随时间和受试者的物理状态高度变化。在本文中,我们提出了一种基于卷积神经网络的基于PPG的新型生物识别验证系统。与以前的方法相反,我们的方法从其扩散动力学中提取PPG信号的生物特征特征,其特征在于(P,Q) - 平台中特定于0-1测试中的几何图像图像。 PPG信号的扩散动力学很大程度上取决于血管床的生物结构,该生物结构是每个人所独有的,并且随着时间的推移和其他心理状况而高度稳定。除了它的鲁棒性外,我们的生物特征方法是抗螺旋体的,鉴于血液网络的复杂性。我们的生物特征验证系统通过一次尝试达到非常低的误差率(ERR),从而使其本质的本质使其成为可能,以易于集成到可穿戴生物识别系统中的微型组件中实现它。
In the first half of the 20th century, a first pulse oximeter was available to measure blood flow changes in the peripheral vascular net. However, it was not until recent times the PhotoPlethysmoGraphic (PPG) signal used to monitor many physiological parameters in clinical environments. Over the last decade, its use has extended to the area of biometrics, with different methods that allow the extraction of characteristic features of each individual from the PPG signal morphology, highly varying with time and the physical states of the subject. In this paper, we present a novel PPG-based biometric authentication system based on convolutional neural networks. Contrary to previous approaches, our method extracts the PPG signal's biometric characteristics from its diffusive dynamics, characterized by geometric patterns image in the (p, q)-planes specific to the 0-1 test. The diffusive dynamics of the PPG signal are strongly dependent on the vascular bed's biostructure, which is unique to each individual, and highly stable over time and other psychosomatic conditions. Besides its robustness, our biometric method is anti-spoofing, given the convoluted nature of the blood network. Our biometric authentication system reaches very low Equal Error Rates (ERRs) with a single attempt, making it possible, by the very nature of the envisaged solution, to implement it in miniature components easily integrated into wearable biometric systems.