计算机科学
可验证秘密共享
正确性
云计算
图像检索
加密
数据挖掘
卷积神经网络
散列函数
情报检索
图像(数学)
理论计算机科学
人工智能
算法
计算机安全
集合(抽象数据类型)
程序设计语言
操作系统
作者
Dong Li,Qingguo Lü,Xiaofeng Liao,Tao Xiang,Jiahui Wu,Junqing Le
标识
DOI:10.1109/tdsc.2024.3355223
摘要
The increasing privacy concerns associated with cloud-assisted image retrieval have captured the attention of researchers. However, a significant number of current research endeavors encounter limitations, including suboptimal accuracy, inefficient retrieval, and a lack of effective result verification mechanisms. To address these limitations, we propose an adaptive verifiable privacy-preserving medical image retrieval (AVPMIR) scheme in the outsourced cloud. Specifically, we utilize the convolutional neural network (CNN) ResNet50 model to extract the feature of each medical image within the dataset of the medical institution, aiming to enhance retrieval accuracy. To enhance retrieval efficiency, we build an encryption searchable index based on a mini-batch $k$ -means clustering algorithm. Furthermore, we present an index merging method in which multi-data owners build a different index tree according to different standards. To check the correctness of the returned results from the cloud server, we construct an adaptive verification framework for the obtained results based on chameleon hash and BLS signature. To provide strong security for the medical image datasets, we design an improved logistic chaotic mapping algorithm. The security analysis demonstrates that AVPMIR can defend various threat models. The experiment analysis further indicates that the AVPMIR can improve retrieval efficiency and demonstrate its practicability.
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