Efficient privacy-preserving spatial data query in cloud computing
With the rapid development of geographic location technology and the explosive growth of data, a large amount of spatial data is outsourced to the cloud server for reducing the local high storage and computing burdens, but at the same time causes security issues. Thus, extensive privacy-preserving s...
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sg-smu-ink.sis_research-96202024-01-25T08:19:40Z Efficient privacy-preserving spatial data query in cloud computing MIAO, Yinbin YANG, Yutao LI, Xinghua WEI, Linfeng LIU, Zhiquan DENG, Robert H. With the rapid development of geographic location technology and the explosive growth of data, a large amount of spatial data is outsourced to the cloud server for reducing the local high storage and computing burdens, but at the same time causes security issues. Thus, extensive privacy-preserving spatial data query schemes have been proposed. Most of the existing schemes use Asymmetric Scalar-Product-Preserving Encryption (ASPE) to encrypt data, but ASPE has proven to be insecure against known plaintext attack. And the existing schemes require users to provide more information about query range and thus generate a large amount of ciphertexts, which causes high storage and computational burdens. To solve these issues, based on enhanced ASPE designed in our conference version, we first propose a basic Privacy-preserving Spatial Data Query (PSDQ) scheme by using a new unified index structure, which only requires users to provide less information about query range. Then, we propose an enhanced PSDQ scheme (PSDQ$+$+) by using Geohash-based $R$R-tree structure (called $GR$GR-tree) and efficient pruning strategy, which greatly reduces the query time. Formal security analysis proves that our schemes achieve Indistinguishability under Chosen Plaintext Attack (IND-CPA), and extensive experiments demonstrate that our schemes are efficient in practice. 2024-01-01T08:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/8617 info:doi/10.1109/TKDE.2023.3283020 https://ink.library.smu.edu.sg/context/sis_research/article/9620/viewcontent/Eff_Privacy_Preser_TKDE_av.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Cloud server privacy-preserving query range security issues spatial data Information Security Theory and Algorithms |
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Cloud server privacy-preserving query range security issues spatial data Information Security Theory and Algorithms MIAO, Yinbin YANG, Yutao LI, Xinghua WEI, Linfeng LIU, Zhiquan DENG, Robert H. Efficient privacy-preserving spatial data query in cloud computing |
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With the rapid development of geographic location technology and the explosive growth of data, a large amount of spatial data is outsourced to the cloud server for reducing the local high storage and computing burdens, but at the same time causes security issues. Thus, extensive privacy-preserving spatial data query schemes have been proposed. Most of the existing schemes use Asymmetric Scalar-Product-Preserving Encryption (ASPE) to encrypt data, but ASPE has proven to be insecure against known plaintext attack. And the existing schemes require users to provide more information about query range and thus generate a large amount of ciphertexts, which causes high storage and computational burdens. To solve these issues, based on enhanced ASPE designed in our conference version, we first propose a basic Privacy-preserving Spatial Data Query (PSDQ) scheme by using a new unified index structure, which only requires users to provide less information about query range. Then, we propose an enhanced PSDQ scheme (PSDQ$+$+) by using Geohash-based $R$R-tree structure (called $GR$GR-tree) and efficient pruning strategy, which greatly reduces the query time. Formal security analysis proves that our schemes achieve Indistinguishability under Chosen Plaintext Attack (IND-CPA), and extensive experiments demonstrate that our schemes are efficient in practice. |
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MIAO, Yinbin YANG, Yutao LI, Xinghua WEI, Linfeng LIU, Zhiquan DENG, Robert H. |
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MIAO, Yinbin YANG, Yutao LI, Xinghua WEI, Linfeng LIU, Zhiquan DENG, Robert H. |
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MIAO, Yinbin |
title |
Efficient privacy-preserving spatial data query in cloud computing |
title_short |
Efficient privacy-preserving spatial data query in cloud computing |
title_full |
Efficient privacy-preserving spatial data query in cloud computing |
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Efficient privacy-preserving spatial data query in cloud computing |
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Efficient privacy-preserving spatial data query in cloud computing |
title_sort |
efficient privacy-preserving spatial data query in cloud computing |
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Institutional Knowledge at Singapore Management University |
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2024 |
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https://ink.library.smu.edu.sg/sis_research/8617 https://ink.library.smu.edu.sg/context/sis_research/article/9620/viewcontent/Eff_Privacy_Preser_TKDE_av.pdf |
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