使用分层快速盲反卷积保护大规模物联网

G. Wunder, I. Roth, Rick Fritschek, Benedikt Groß, J. Eisert
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引用次数: 6

摘要

物联网,特别是触觉互联网对安全概念提出了重大挑战。在这项工作中,我们引入了一种新的安全大规模访问概念。该方法的核心是一种快速、低复杂度的盲反卷积算法,探索双线性和分层压缩感知框架。我们证明了盲反卷积有两个吸引人的特点:1)不需要协调导频信号,因此即使在用户活动发生冲突的情况下,也可以解决信息消息。2)由于所有单独的信道都是并行恢复的,并且通过假定的信道互易性,测量的信道熵作为一个公共秘密,并用作每个用户的加密密钥。我们将概述该方法的基本概念,并详细描述盲反卷积算法。最后,通过仿真验证了该算法能够同时恢复信道和消息。它们还展示了该方案在经济复苏和秘密产能之间的内在权衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Secure massive IoT using hierarchical fast blind deconvolution
The Internet of Things and specifically the Tactile Internet give rise to significant challenges for notions of security. In this work, we introduce a novel concept for secure massive access. The core of our approach is a fast and low-complexity blind deconvolution algorithm exploring a bi-linear and hierarchical compressed sensing framework. We show that blind deconvolution has two appealing features: 1) There is no need to coordinate the pilot signals, so even in the case of collisions in user activity, the information messages can be resolved. 2) Since all the individual channels are recovered in parallel, and by assumed channel reciprocity, the measured channel entropy serves as a common secret and is used as an encryption key for each user. We will outline the basic concepts underlying the approach and describe the blind deconvolution algorithm in detail. Eventually, simulations demonstrate the ability of the algorithm to recover both channel and message. They also exhibit the inherent trade-offs of the scheme between economical recovery and secret capacity.
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