外包空间数据库查询认证

Jun Hong, Tao Wen, Quan Guo
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引用次数: 0

摘要

为节省管理和维护数据库的成本,越来越多的个人和公司将空间数据库外包给第三方,即数据所有者将其空间数据管理任务委托给第三方,并授权第三方提供查询服务,这已成为一种普遍的做法。但是,第三方是不完全可信的。因此,应该向客户端提供身份验证信息以进行查询身份验证。本文引入了一种高效的空间认证数据结构——可验证相似度索引树(VSS-tree)来支持空间认证查询。我们在SS-tree的基础上,采用边界球代替边界矩形作为区域形状,构建了VSS-tree,并对其进行了扩展。第三方基于VSS-tree查找查询结果并构建相应的验证对象。客户端使用验证对象和发布的公钥执行查询身份验证。最后,对算法的性能和有效性进行了评价,实验结果表明,vss树能够有效地支持空间查询,并具有比Merkle R树(MR-tree)更好的性能。
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Query Authentication of Outsourced Spatial Database
Outsourcing spatial database to a third party is becoming a common practice for more and more individuals and companies to save the cost of managing and maintaining database, where a data owner delegates its spatial data management tasks to a third party and grants it to provide query services. However, the third party is not full trusted. Thus, authentication information should be provided to the client for query authentication. In this paper, we introduce an efficient space authenticated data structure, called Verifiable Similarity Indexing tree (VSS-tree), to support authenticated spatial query. We build VSS-tree based on SS-tree which employs bounding sphere rather than bounding rectangle for region shape and extend it with authentication information. Based on VSS-tree, the third party finds query results and builds their corresponding verification object. The client performs query authentication using the verification object and the public key published. Finally, we evaluate the performance and validity of our algorithms, the experiment results show that VSS-tree can efficiently support spatial query and have better performance than Merkle R tree (MR-tree).
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