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Key Extraction From General Nondiscrete Signals

机译:从一般非离散信号中提取密钥

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We address the problem of designing optimal schemes for the generation of secure cryptographic keys from continuous noisy data. We argue that, contrary to the discrete case, a universal fuzzy extractor does not exist. This implies that in the continuous case, key extraction schemes have to be designed for particular probability distributions. We extend the known definitions of the correctness and security properties of fuzzy extractors. Our definitions apply to continuous as well as discrete variables. We propose a generic construction for fuzzy extractors from noisy continuous sources, using independent partitions. The extra freedom in the choice of discretization, which does not exist in the discrete case, is advantageously used to give the extracted key a uniform distribution. We analyze the privacy properties of the scheme and the error probabilities in a one-dimensional toy model with simplified noise. Finally, we study the security implications of incomplete knowledge of the source's probability distribution ${BBP }$. We derive a bound on the min-entropy of the extracted key under the worst-case assumption, where the attacker knows ${BBP }$ exactly.
机译:我们解决了设计用于从连续噪声数据生成安全密码密钥的最佳方案的问题。我们认为,与离散情况相反,不存在通用模糊提取器。这意味着在连续情况下,必须针对特定的概率分布设计密钥提取方案。我们扩展了模糊提取器的正确性和安全性属性的已知定义。我们的定义适用于连续变量和离散变量。我们提出了使用独立分区从嘈杂连续源模糊提取器的通用构造。在离散情况下不存在的离散化选择中的额外自由度有利地用于赋予提取的密钥均匀的分布。我们在简化噪声的一维玩具模型中分析了该方案的隐私属性和错误概率。最后,我们研究了对源的概率分布$ {BBP} $的不完全了解的安全隐患。在最坏情况的假设下,我们得出提取密钥的最小熵的界限,在该假设下,攻击者确切地知道$ {BBP} $。

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