Fucai ZhouZongye ZhangRuiwei Hou
Abstract The ever-growing multi-modal images pose great challenges to local image storage and retrieval systems. Cloud computing provides a solution to large-scale image data storage but suffers from privacy issues and lacks the support for multi-modal image retrieval. To address these, a searchable encryption-empowered privacy-preserving multi-modal image retrieval method is proposed. First, we design a hybrid image retrieval framework that fuses visual features and textual features at a decision level and further supports similar image retrieval and multi-keyword image retrieval. Second, we construct a new hybrid inverted index structure to distinguish high-frequency terms from low-frequency terms and index them through hierarchical index trees and data blocks, respectively, which greatly improves query efficiency. Third, we design a prime encoding-based multi-keyword query method that converts mapping operations in bloom filters into inner product calculations, and further implements secure multi-keyword image query. Experiments against the Baseline schemes are conducted to verify the performance of the scheme in terms of high efficiency.
Zelong SunG. YangZhiwu LuHao JiangGuojie ZhuZhao Cao
Kejun ZhangShaofei XuYutuo SongYuwei XuPengcheng LiYang XiangBing ZouWenbin Wang
Tengfei YangJiawei HeZhiquan LiuYinbin MiaoBaodong QinFang RenTeng Wang
Yuejing YanYanyan XuZhiheng WangXue OuyangBo ZhangZheheng Rao