基于同态加密的传感器数据安全处理

V. Gadepally, Mihailo Isakov, R. Agrawal, J. Kepner, K. Gettings, M. Kinsy
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引用次数: 0

摘要

新颖的传感器处理算法在应用上面临许多障碍。随着威胁的不断增加,传感器处理环境变得越来越困难。这些威胁反过来又提高了部署新能力的门槛。许多新颖的传感器处理算法利用或诱导随机性来提高算法性能。将这种随机性与密码学特征共同设计可能是一种强大的组合,既可以提高算法性能,又可以提高弹性。新兴的信号处理领域在加密领域已经开始探索这样的方法。这种新型算法的发展将需要新型的工具。特别是,基础线性代数数学需要用密码学概念来增强,以允许研究人员探索这个新领域。这项工作强调了一种相对低开销的方法,该方法使用同态加密来增强较大传感器处理管道的一部分的弹性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Homomorphic Encryption Based Secure Sensor Data Processing
Novel sensor processing algorithms face many hurdles to their adoption. Sensor processing environments have become increasingly difficult with an ever increasing array of threats. These threats have, in turn, raised the bar on deploying new capabilities. Many novel sensor processing algorithms exploit or induce randomness to boost algorithm performance. Co-designing this randomness with cryptographic features could be a powerful combination providing both improved algorithm performance and increased resiliency. The emerging field of signal processing in the encrypted domain has begun to explore such approaches. The development of this new class of algorithms will require new classes of tools. In particular, the foundational linear algebraic mathematics will need to be enhanced with cryptographic concepts to allow researchers to explore this new domain. This work highlights a relatively low overhead method that uses homomorphic encryption to enhance the resiliency of a part of a larger sensor processing pipeline.
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