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首页> 外文期刊>Internet of Things Journal, IEEE >Secure and Efficient K Nearest Neighbor Query Over Encrypted Uncertain Data in Cloud-IoT Ecosystem
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Secure and Efficient K Nearest Neighbor Query Over Encrypted Uncertain Data in Cloud-IoT Ecosystem

机译:Cloud-IoT生态系统中加密不确定数据的安全和高效的K最近邻查询

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摘要

Uncertain data pervades many fields, including environmental monitoring, the monitoring of animal migrations, and urban warfare. Such uncertain data collected by field devices, such as Internet of Things (IoT) and Internet of Battlefield Things (IoBT) devices, may also be encrypted and outsourced to an untrustworthy third party for storage and data sharing such as a cloud server. However, the properties of uncertain data and the complication of operating over encrypted data make the searching schemes more ineffective. In this article, we design an efficient and safe K nearest neighbor (KNN) query scheme for uncertain data stored in semi-trusted cloud servers. We apply the modified homomorphic encryption, which requires two servers to interact and encrypt the uncertain data, and we use the authorized rank method to compute KNN. We protect the security of the data while simultaneously improving the query efficiency. Our detailed security analysis show that our scheme can realize the goal of concealing both the access and the search patterns. Comprehensive experiments are conducted to demonstrate the scheme's performance.
机译:不确定的数据遍及许多领域,包括环境监测,对动物迁徙的监测和城市战争。这种不确定的数据由现场设备收集的,例如物联网(物联网)和战场内容(Iobt)设备(Iobt)设备(Iobt),也可以加密和外包给不值得信任的第三方,用于存储和数据共享,例如云服务器。然而,不确定数据的性质和通过加密数据运行的复杂性使得搜索方案更为无效。在本文中,我们设计了一个有效和安全的K最近邻(KNN)查询方案,用于存储在半信子云服务器中的不确定数据。我们应用修改后的同性全密加密,这需要两个服务器进行交互和加密不确定的数据,并且我们使用授权的秩方法来计算KNN。我们在同时提高查询效率的同时保护数据的安全性。我们的详细安全分析表明,我们的计划可以实现隐藏访问和搜索模式的目标。进行综合实验以展示该方案的表现。

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