Chao-Yung HsuChun-Shien LuSoo‐Chang Pei
Privacy has received much attention but is still largely ignored in the multimedia community. Consider a cloud computing scenario, where the server is resource-abundant and is capable of finishing the designated tasks, it is envisioned that secure media retrieval and search with privacy-preserving will be seriously treated. In view of the fact that scale-invariant feature transform (SIFT) has been widely adopted in various fields, this paper is the first to address the problem of secure SIFT feature extraction and representation in the encrypted domain. Since all the operations in SIFT must be moved to the encrypted domain, we propose a homomorphic encryption-based secure SIFT method for privacy-preserving feature extraction and representation based on Paillier cryptosystem. In particular, homomorphic comparison is a must for SIFT feature detection but is still a challenging issue for homomorphic encryption methods. To conquer this problem, we investigate a quantization-like secure comparison strategy in this paper. Experimental results demonstrate that the proposed homomorphic encryption-based SIFT performs comparably to original SIFT on image benchmarks, while preserving privacy additionally. We believe that this work is an important step toward privacy-preserving multimedia retrieval in an environment, where privacy is a major concern.
Xiang LiuXueli ZhaoZhihua XiaFeng QianPeipeng YuJian Weng
Junyi ZhangXingpeng XiaoWenkun RenYaomin Zhang
Shinji OnoJun TakataMasaharu KataokaI TomohiroKilho ShinHiroshi Sakamoto
Yiming ZhangHangjie YiWanzeng Kong
K. MurugesanLavanya Subbarayalu RamamurthyBalamurugan PalanisamyYamini ChandrasekarKavitha Bharathi ShanmugamBalluru Thammaiahshetty Adishankar NithyaVelumani ThiyagarajaRamaraj Muniappan