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Towards Continuous User Recognition by Exploring Physiological Multimodality: An Electrocardiogram (ECG) and Blood Volume Pulse (BVP) Approach

机译:通过探索生理多模态来实现连续用户识别:心电图(ECG)和血容量脉冲(BVP)方法

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Work on pervasive systems for performing continuous identity recognition has become a major research line due to the more recent developments on wearable and more user-friendly sensors. In this paper we present a multibiometric system based on physiological signals and integrated in a human-computer interaction (HCI) setup, which includes the electrocardiogram (ECG) and blood volume pulse (BVP). Feature extraction was performed on waveform morphology, and k-Nearest Neighbors and Naive-Bayes decision level fusion classifiers were used to perform identification and authentication tests. Furthermore, our approach is based on signal windowing, targeting a near real-time and continuous recognition application scenario. Results show that the BVP signal did not add value to improve the performance of the multimodal approach, but the combined use of windows of different lengths for the ECG modality can yield an increase in the performance. Tests were performed using within- and across- session data, to assess the stability of the signals over time, and the generalization ability of the classifiers. Rank-1 Error of Identification (EID) values of approximately 2% and 8% were obtained respectively in within and across-session identification tests while, in authentication, Equal Error Rate (EER) values of approximately 4% and 13% were achieved.
机译:由于可穿戴和用户友好型传感器的最新发展,用于执行连续身份识别的普及系统的研究已成为主要研究领域。在本文中,我们提出了一种基于生理信号并集成在人机交互(HCI)设置中的多生物测量系统,其中包括心电图(ECG)和血容量脉冲(BVP)。对波形形态进行特征提取,并使用k最近邻和朴素贝叶斯决策级融合分类器进行识别和认证测试。此外,我们的方法基于信号窗口化,针对近实时和连续识别的应用场景。结果表明,BVP信号并没有增加价值,无法改善多峰方法的性能,但是将不同长度的窗口用于ECG模态的组合使用可以提高性能。使用会话内和会话间数据进行测试,以评估信号随时间变化的稳定性以及分类器的泛化能力。在会话内和跨会话识别测试中,分别获得了大约2%和8%的1级识别错误(EID)值,而在身份验证中,获得了大约4%和13%的相等错误率(EER)值。

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