Efficient and Verifiable Range Query Scheme for Encrypted Geographical Information in Untrusted Cloud Environments

Author:

Mei Zhuolin1,Zeng Jing2,Zhang Caicai3,Yao Shimao1ORCID,Zhang Shunli1ORCID,Wang Haibin1,Li Hongbo4,Shi Jiaoli15ORCID

Affiliation:

1. School of Computer and Big Data Science, Jiujiang University, No. 551, Qianjin East Road, Jiujiang 332000, China

2. China Gridcom Co., Ltd., Shenzhen 518031, China

3. School of Modern Information Technology, Zhejiang Polytechnic University of Mechanical and Electrical Engineering, Hangzhou 310053, China

4. School of Computer Science and Information Technology, Daqing Normal University, Daqing 163111, China

5. Jiujiang Key Laboratory of Cyberspace and Information Security, Jiujiang University, No. 551, Qianjin East Road, Jiujiang 332000, China

Abstract

With the rapid development of geo-positioning technologies, location-based services have become increasingly widespread. In the field of location-based services, range queries on geographical data have emerged as an important research topic, attracting significant attention from academia and industry. In many applications, data owners choose to outsource their geographical data and range query tasks to cloud servers to alleviate the burden of local data storage and computation. However, this outsourcing presents many security challenges. These challenges include adversaries analyzing outsourced geographical data and query requests to obtain privacy information, untrusted cloud servers selectively querying a portion of the outsourced data to conserve computational resources, returning incorrect search results to data users, and even illegally modifying the outsourced geographical data, etc. To address these security concerns and provide reliable services to data owners and data users, this paper proposes an efficient and verifiable range query scheme (EVRQ) for encrypted geographical information in untrusted cloud environments. EVRQ is constructed based on a map region tree, 0–1 encoding, hash function, Bloom filter, and cryptographic multiset accumulator. Extensive experimental evaluations demonstrate the efficiency of EVRQ, and a comprehensive analysis confirms the security of EVRQ.

Funder

National Natural Science Foundation of China

Jiangxi Provincial Natural Science Foundation of China

Zhejiang Province Visiting Engineer Cooperation Project

Heilongjiang Province Natural Science Foundation of China

Publisher

MDPI AG

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