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ELSEIR: A Privacy-Preserving Large-Scale Image Retrieval Framework for Outsourced Data Sharing

Zixin Tang, Haihui Fan, Xiaoyan Gu, Yang Li, Bo Li, Xin Wang

202410 citationsDOIOpen Access PDF

Abstract

Privacy-preserving content-based image retrieval aims to safeguard the security of outsourced private images while maintaining their searchability. However, existing schemes encounter challenges in striking a balance between security, accuracy, and efficiency, as well as difficulties in scaling to large-scale image retrieval in multi-user settings. In this paper, we propose a novel Efficient Large-Scale Encrypted Image Retrieval (ELSEIR) framework for outsourced data sharing. We first utilize a deep hashing model for image feature extraction. Building upon this, we design an irreversible random hash code generation method that incorporates permutation keys for personalized access and integrates differential privacy to further enhance data security. In our multi-user implementation, we distribute the switch keys to the cloud to standardize each key, enabling the accurate search. In addition, we have theoretically proven that our ELSEIR guarantees both outsourced data security and query user privacy. Extensive experiments on real-world datasets demonstrate that our ELSEIR yields comparable accuracy to the unprotected baseline while outperforming existing methods in terms of both retrieval accuracy and efficiency.

Topics & Concepts

Computer scienceDifferential privacyHash functionEncryptionImage retrievalCloud computingInformation retrievalData miningKey (lock)Image (mathematics)Computer securityArtificial intelligenceOperating systemAdvanced Image and Video Retrieval TechniquesCryptography and Data SecurityPrivacy-Preserving Technologies in Data
ELSEIR: A Privacy-Preserving Large-Scale Image Retrieval Framework for Outsourced Data Sharing | Litcius