加密键值存储的k -不可区分数据访问

C. Zhang, Qingyuan Xie, Yinbin Miao, Xiaohua Jia
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引用次数: 1

摘要

键值存储因其在处理大数据工作负载方面的高性能而被很多应用所采用。最近对安全云存储的研究表明,即使对数据进行加密,攻击者也可以通过频率分析等访问模式攻击来了解数据的敏感信息。针对这个问题,已经提出了一些方案来保护加密的键值存储免受访问模式攻击。但是,现有的解决方案以大量存储和带宽开销为代价来保护访问模式信息,这对于大规模键值存储来说是不可接受的。在本文中,我们设计了一种用于加密键值存储的k -不可区分频率平滑方案,该方案可以以最小的存储和带宽开销抵御被动持久对手发起的访问模式攻击。然后,我们提出了一种动态k -不可分辨频率平滑方案。它能有效地适应接入分布的变化,同时保证k -不可区分的安全级别和带宽效率。最后,我们正式分析了我们设计的安全性。大量的实验表明,我们的设计实现了高吞吐量,同时最大限度地减少了存储和带宽开销。
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K-Indistinguishable Data Access for Encrypted Key-Value Stores
Key-value store is adopted by many applications due to its high performance in processing big data workloads. Recent research on secure cloud storage has shown that even if the data is encrypted, attackers can learn the sensitive information of data by launching access pattern attacks such as frequency analysis. For this issue, some schemes have been proposed to protect encrypted key-value stores against access pattern attacks. However, existing solutions protect access pattern information at the cost of large storage and bandwidth overhead, which is unacceptable for large-scale key-value stores. In this paper, we devise a K-indistinguishable frequency smoothing scheme for encrypted key-value stores, which can resist access pattern attacks launched by passive persistent adversaries with minimal storage and bandwidth overhead. Then, we propose a dynamic K-indistinguishable frequency smoothing scheme. It can efficiently adapt to the changes in access distribution while ensuring the K-indistinguishable security level and bandwidth efficiency. Finally, we formally analyze the security of our design. Extensive experiments demonstrate that our design achieves high throughput while minimizing storage and bandwidth overhead.
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