Efficient and secure Spatial Range Query over large-scale encrypted data
Spatial range query enjoys widespread application scenarios due to the ever-growing geo-positioning technology in recent years. Huge amounts of encrypted geo-location data are being outsourced to cloud servers to alleviate local storage and computational overheads without leaking sensitive informati...
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sg-smu-ink.sis_research-95622024-01-18T02:30:03Z Efficient and secure Spatial Range Query over large-scale encrypted data MIAO, Yinbin XU, Chao ZHENG, Yifeng LIU, Ximeng MENG, Xiangdong DENG, Robert H. Spatial range query enjoys widespread application scenarios due to the ever-growing geo-positioning technology in recent years. Huge amounts of encrypted geo-location data are being outsourced to cloud servers to alleviate local storage and computational overheads without leaking sensitive information. However, most existing Privacy-preserving Spatial Range Query (PSRQ) cannot achieve high efficiency while satisfying strong security over large-scale encrypted spatial data. To strike a best possible balance between security and efficiency, we propose a novel efficient Privacy-preserving Spatial Range Query (eP-SRQ) scheme in dual-cloud architecture over large-scale dataset. Specifically, we propose an efficient PSRQ scheme by designing a novel index structure based on Geohash algorithm, Circular Shift and Coalesce Zero-Sum Garbled Bloom Filter (CSC-ZGBF) and Symmetric Homomorphic Encryption (SHE), which makes the computational complexity of query process independent of dataset size. Formal security analysis proves that our scheme can achieve Indistinguishability against Chosen-Plaintext Attack (IND-CPA), and extensive experiments prove that our scheme is feasible in real-world applications. 2023-07-21T07:00:00Z text https://ink.library.smu.edu.sg/sis_research/8559 info:doi/10.1109/ICDCS57875.2023.00055 Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Privacy Query processing Distributed databases Computer architecture Filtering algorithms Spatial databases Cryptograph Spatial range query Information Security Theory and Algorithms |
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Privacy Query processing Distributed databases Computer architecture Filtering algorithms Spatial databases Cryptograph Spatial range query Information Security Theory and Algorithms MIAO, Yinbin XU, Chao ZHENG, Yifeng LIU, Ximeng MENG, Xiangdong DENG, Robert H. Efficient and secure Spatial Range Query over large-scale encrypted data |
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Spatial range query enjoys widespread application scenarios due to the ever-growing geo-positioning technology in recent years. Huge amounts of encrypted geo-location data are being outsourced to cloud servers to alleviate local storage and computational overheads without leaking sensitive information. However, most existing Privacy-preserving Spatial Range Query (PSRQ) cannot achieve high efficiency while satisfying strong security over large-scale encrypted spatial data. To strike a best possible balance between security and efficiency, we propose a novel efficient Privacy-preserving Spatial Range Query (eP-SRQ) scheme in dual-cloud architecture over large-scale dataset. Specifically, we propose an efficient PSRQ scheme by designing a novel index structure based on Geohash algorithm, Circular Shift and Coalesce Zero-Sum Garbled Bloom Filter (CSC-ZGBF) and Symmetric Homomorphic Encryption (SHE), which makes the computational complexity of query process independent of dataset size. Formal security analysis proves that our scheme can achieve Indistinguishability against Chosen-Plaintext Attack (IND-CPA), and extensive experiments prove that our scheme is feasible in real-world applications. |
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author |
MIAO, Yinbin XU, Chao ZHENG, Yifeng LIU, Ximeng MENG, Xiangdong DENG, Robert H. |
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MIAO, Yinbin XU, Chao ZHENG, Yifeng LIU, Ximeng MENG, Xiangdong DENG, Robert H. |
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MIAO, Yinbin |
title |
Efficient and secure Spatial Range Query over large-scale encrypted data |
title_short |
Efficient and secure Spatial Range Query over large-scale encrypted data |
title_full |
Efficient and secure Spatial Range Query over large-scale encrypted data |
title_fullStr |
Efficient and secure Spatial Range Query over large-scale encrypted data |
title_full_unstemmed |
Efficient and secure Spatial Range Query over large-scale encrypted data |
title_sort |
efficient and secure spatial range query over large-scale encrypted data |
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Institutional Knowledge at Singapore Management University |
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2023 |
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https://ink.library.smu.edu.sg/sis_research/8559 |
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