3.8 Proceedings Paper

Fast and Secure Key Generation with Channel Obfuscation in Slowly Varying Environments

出版社

IEEE
DOI: 10.1109/INFOCOM48880.2022.9796694

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资金

  1. National Natural Science Foundation of China [6217011510, 61801115, 61941115]
  2. Natural Science Foundation of Jiangsu Province [BK20211160]

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The research proposes a physical-layer secret key generation approach with channel obfuscation, which enhances the key generation rate and resilience to attacks by improving the dynamic properties of channel parameters. It can generate high entropy bits at a faster rate and pass randomness tests in NIST test suite.
Physical-layer secret key generation has emerged as a promising solution for establishing cryptographic keys by leveraging reciprocal and time-varying wireless channels. However, existing approaches suffer from low key generation rates and vulnerabilities under various attacks in slowly varying environments. We propose a new physical-layer secret key generation approach with channel obfuscation, which improves the dynamic property of channel parameters based on random filtering and random antenna scheduling. Our approach makes one party obfuscate the channel to allow the legitimate party to obtain similar dynamic channel parameters, yet prevents a third party from inferring the obfuscation information. Our approach allows more random bits to be extracted from the obfuscated channel parameters by a joint design of the K-L transform and adaptive quantization. Results from a testbed implementation show that our approach, compared to the existing ones that we evaluate, performs the best in generating high entropy bits at a fast rate and is able to resist various attacks in slowly varying environments. Specifically, our approach can achieve a significantly faster secret bit generation rate at roughly 67 bit/pkt, and the key sequences can pass the randomness tests of the NIST test suite.

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