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Heartbeats Do Not Make Good Pseudo-Random Number Generators: An Analysis of the Randomness of Inter-Pulse Intervals

机译:心跳不会产生良好的伪随机数发生器:分析脉冲间隔的随机性

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摘要

The proliferation of wearable and implantable medical devices has given rise to an interest in developing security schemes suitable for these systems and the environment in which they operate. One area that has received much attention lately is the use of (human) biological signals as the basis for biometric authentication, identification and the generation of cryptographic keys. The heart signal (e.g., as recorded in an electrocardiogram) has been used by several researchers in the last few years. Specifically, the so-called Inter-Pulse Intervals (IPIs), which is the time between two consecutive heartbeats, have been repeatedly pointed out as a potentially good source of entropy and are at the core of various recent authentication protocols. In this work, we report the results of a large-scale statistical study to determine whether such an assumption is (or not) upheld. For this, we have analyzed 19 public datasets of heart signals from the Physionet repository, spanning electrocardiograms from 1353 subjects sampled at different frequencies and with lengths that vary between a few minutes and several hours. We believe this is the largest dataset on this topic analyzed in the literature. We have then applied a standard battery of randomness tests to the extracted IPIs. Under the algorithms described in this paper and after analyzing these 19 public ECG datasets, our results raise doubts about the use of IPI values as a good source of randomness for cryptographic purposes. This has repercussions both in the security of some of the protocols proposed up to now and also in the design of future IPI-based schemes.
机译:可穿戴和可植入的医疗设备的增殖使得对开发适合于这些系统的安全方案和它们运行的​​环境的兴趣引起了兴趣。最近受到很多关注的一个区域是使用(人类)生物信号作为生物识别认证,识别和加密密钥的产生的基础。心脏信号(例如,在心电图中记录的)已经在过去几年中使用了几个研究人员使用。具体地,所谓的脉冲间隔(IPIS),其是两个连续的心跳之间的时间被重复地指出,作为潜在的熵源并且处于各种最近认证协议的核心。在这项工作中,我们报告了大规模统计研究的结果,以确定这种假设是否(或不)维持。为此,我们已经分析了来自PhysioIoneTepitory的19个心脏信号的公共数据集,从不同频率采样的1353个受试者跨越心电图,并且长度在几分钟和几个小时之间变化。我们认为这是在文献中分析了本主题的最大数据集。然后我们已将标准电池应用于提取的IPIS。在本文中描述的算法下,在分析了这19个公共ECG数据集之后,我们的结果促进了关于使用IPI值作为加​​密目的随机性的好来源的疑虑。这在迄今为止的一些协议的安全性方面具有影响,并且在未来的基于IPI的方案的设计中也具有困境。

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