首页> 外文会议>Proceedings of the 2017 IEEE International Symposium on Hardware Oriented Security and Trust >A novel physiological features-assisted architecture for rapidly distinguishing health problems from hardware Trojan attacks and errors in medical devices
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A novel physiological features-assisted architecture for rapidly distinguishing health problems from hardware Trojan attacks and errors in medical devices

机译:一种新颖的生理特征辅助体系结构,用于快速区分健康问题与硬件木马攻击以及医疗设备中的错误

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摘要

Malicious Hardware Trojans (HTs) that are inserted during chip manufacturing can corrupt data which if undetected may cause serious harm in medical devices. This paper presents a novel physiological features-assisted architecture to detect and distinguish attacks by ultra-small HTs from actual health problems in health monitoring applications. Our threat scenario considers attacks that pass undetected using other HT detection methods such as ones that use side-channel analysis and digital systems test. The key to our detection approach is to embed multiple signature generation and testing techniques, some of which are based on physiology, deep in the hardware and close to the origin of data generation. Our experimental results show that our proposed techniques are able to distinguish unhealthy physiology from functionality altering HT attacks anywhere inside a state-of-the-art medical chip including the chip's primary inputs with minimal performance and area overhead.
机译:在芯片制造期间插入的恶意硬件特洛伊木马(HT)可能会破坏数据,如果未检测到,可能会对医疗设备造成严重伤害。本文提出了一种新颖的生理特征辅助架构,以检测和区分超小型HT的攻击与健康监控应用中的实际健康问题。我们的威胁方案考虑使用其他HT检测方法(例如使用边信道分析和数字系统测试的方法)未检测到的攻击。我们检测方法的关键是嵌入多种签名生成和测试技术,其中一些基于生理学,深入硬件中,并且与数据生成的起源接近。我们的实验结果表明,我们提出的技术能够从功能最先进的医疗芯片(包括该芯片的主要输入)在内的任何地方改变HT攻击的功能区分开来,从而以最小的性能和最小的区域开销来区分不健康的生理。

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