基于最小信任的元数据隐藏策略可控加密搜索平台

Tung Le, Thang Hoang
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引用次数: 0

摘要

商品加密存储平台(例如,IceDrive, pCloud)允许在保持数据机密性的同时跨多个用户存储和共享数据。但是,端到端加密可能还不够,因为它仅在数据处于静止或传输状态时提供机密性。同时,在数据操作(如查询、处理)过程中,代表活动的元数据可能会泄露敏感信息。最近的加密搜索平台,如DORY (OSDI ' 20)或DURASIFT (WPES ' 19)允许多用户数据查询功能,同时保护元数据隐私。然而,它们要么产生很高的处理开销,要么提供有限的安全性/功能,并且需要很强的信任假设。我们提出了MAPLE,这是一个新的元数据隐藏加密搜索平台,它在具有复杂策略控制的多用户共享数据上提供查询功能(搜索,更新)。MAPLE在查询处理过程中始终保护元数据隐私,同时实现比最先进的平台显著(渐进)更低的处理开销。MAPLE的核心技术是设计用于搜索索引和访问控制的无关数据结构,并结合安全计算技术,以最小的信任实现高效的查询处理。我们完全实现了MAPLE,并在真实设置下对其在商品云(Amazon EC2)上的性能进行了评估。实验结果表明,MAPLE在提供更强的安全保障和更多样化的功能的同时,取得了与同类产品相当的具体性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MAPLE: A Metadata-Hiding Policy-Controllable Encrypted Search Platform with Minimal Trust
Commodity encrypted storage platforms (e.g., IceDrive, pCloud) permit data store and sharing across multiple users while preserving data confidentiality. However, end-to-end encryption may not be sufficient since it only offers confidentiality when the data is at rest or in transit. Meanwhile, sensitive information can be leaked from metadata representing activities during data operations (e.g., query, processing). Recent encrypted search platforms such as DORY (OSDI’20) or DURASIFT (WPES’19) permit multi-user data query functionalities, while protecting metadata privacy. However, they either incur a high processing overhead or offer limited security/functionality, and require strong trust assumptions. We propose MAPLE, a new metadata-hiding encrypted search platform that offers query functionalities (search, update) on the shared data across multiple users with complex policy controls. MAPLE protects metadata privacy all the time during query processing, while achieving significantly (asymptotically) lower processing overhead than state-of-the-art platforms. The core technique of MAPLE is the design of oblivious data structures for search index and access control coupled with secure computation techniques to enable efficient query processing with a minimal trust. We fully implemented MAPLE and evaluated its performance on commodity cloud (Amazon EC2) under real settings. Experimental results showed that MAPLE achieved a concrete performance comparable with its counterparts, while offering provably stronger security guarantees and more diverse functionalities.
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