Channel Estimation for Secret Key Generation

M. McGuire
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引用次数: 7

Abstract

Generating secret keys from radio channel measurements has been shown to allow private communications. Previously described methods for performing wireless key generation have not come close to achieving the theoretical upper bounds on key rates theory for this technique. This paper demonstrates how using a Kalman filter based on an auto-regressive (AR) model for the channel process, channel gain measurements can be converted into a sequence of independent Gaussian vectors. Methods for processing these vectors so they are compatible with existing secret key quantization and error reconciliation techniques are also presented. It is shown how the mutual information in these vectors is near that of the theoretical upper bounds. Finally, it is shown that most of the available secret key bits can be extracted using practical quantization and error reconciliation techniques.
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密钥生成的信道估计
从无线电信道测量中生成密钥已被证明可以实现私人通信。先前描述的用于执行无线密钥生成的方法尚未接近于实现该技术的密钥速率理论的理论上限。本文演示了如何使用基于自回归(AR)模型的信道过程卡尔曼滤波器,信道增益测量可以转换成一个独立的高斯向量序列。并提出了处理这些矢量的方法,使其与现有的密钥量化和错误协调技术兼容。证明了这些向量的互信息是如何接近理论上界的。最后,通过实际的量化和误差调和技术,可以提取出大多数可用的密钥位。
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