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首页> 外文期刊>Internet of Things Journal, IEEE >Practical Privacy-Preserving ECG-Based Authentication for IoT-Based Healthcare
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Practical Privacy-Preserving ECG-Based Authentication for IoT-Based Healthcare

机译:基于IoT的医疗保健实用的基于隐私保护的ECG身份验证

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摘要

In current healthcare systems, patients use various types of medical Internet of Things devices for monitoring their health conditions. The collected information (personal health records) will be sent back to hospitals for diagnosis and quick responses. However, severe security and privacy leakages with regard to data privacy and identity authentication are incurred because the monitored health data contains sensitive information. Therefore, the data should be well protected from unauthorized entities. Unfortunately, traditional cryptographic approaches or password-based mechanisms cannot fulfill the privacy and security demands in health monitoring due to their low efficiency and knowledge-based property. Biometric authentication overcomes these deficiencies and successfully verifies the inherent characteristics of humans. Among all biometrics, the electrocardiogram (ECG) signal is the most suitable one due to its medical properties. However, the security and privacy objectives of ECG-based authentication usually fail in practice due to the noise interferences in the collected ECG data and the privacy breach of the ECG database. In this paper, we propose a practical scheme that can reliably authenticate patients with noisy ECG signals and provide differentially private protection simultaneously. The effectiveness and efficiency of our scheme are thoroughly analyzed and evaluated over online datasets. We also conduct a pilot study on human subjects experiencing different exercise levels to validate our scheme.
机译:在当前的医疗保健系统中,患者使用各种类型的医疗物联网设备来监视其健康状况。收集的信息(个人健康记录)将被送回医院进行诊断和快速反应。但是,由于监视的健康数据包含敏感信息,因此在数据隐私和身份验证方面会引起严重的安全性和隐私泄漏。因此,应该很好地保护数据免受未经授权的实体的侵害。不幸的是,由于传统的加密方法或基于密码的机制效率低下且基于知识的特性,它们无法满足健康监控中的隐私和安全性要求。生物特征认证克服了这些缺陷,并成功地验证了人类的固有特征。在所有生物特征识别中,心电图(ECG)信号由于其医学特性而成为最合适的信号。但是,由于收集的ECG数据中的噪声干扰和ECG数据库的隐私破坏,基于ECG的身份验证的安全性和隐私目标通常在实践中会失败。在本文中,我们提出了一种实用的方案,该方案可以可靠地对带有嘈杂ECG信号的患者进行身份验证,并同时提供差分私人保护。我们的计划的有效性和效率已通过在线数据集进行了全面分析和评估。我们还对经历不同运动水平的人类受试者进行了初步研究,以验证我们的方案。

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