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首页> 外文期刊>Internet of Things Journal, IEEE >Enabling Secure Cross-Modal Retrieval Over Encrypted Heterogeneous IoT Databases With Collective Matrix Factorization
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Enabling Secure Cross-Modal Retrieval Over Encrypted Heterogeneous IoT Databases With Collective Matrix Factorization

机译:通过集体矩阵分解,在加密的异构IOT数据库中启用安全的跨模型检索

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摘要

Significant volume of information of a broad variety (or modalities, such as image, audio, video, and text) is sensed and collected [such as those by the Internet of Things (IoT) devices] regularly (e.g., hourly). Such information is then analyzed to inform decision making, such as clinical diagnosis and product recommendation. Data with different representations may have the same semantic information, and there have been considerable efforts devoted to designing efficient searching approaches on objects with different modalities. However, multimodal data carry sensitive information, and maintaining privacy is crucial in our privacy-aware and interconnected society. In this article, we combine both the collective matrix factorization (CMF) and homomorphic encryption (HE) to construct an efficient and accurate scheme to facilitate cross-modal retrieval, without the loss of any sensitive information. Our scheme identifies the unified feature vectors for every object in the training set with different modalities and obtains the mapping matrices for out-of-sample objects. After the encryption process, these matrices are stored on the remote cloud server (CS). Hence, the server can calculate the secure, unified features for any query. In this article, we also built a privacy-preserving index structure using locality-sensitive hashing (LSH), which provides both security and efficiency. Performance evaluations demonstrate the potential for our proposed scheme in the real-world IoT applications.
机译:经常(例如,每小时)感测和收集和收集[诸如物联网(IOT)设备的宽容(或图像,音频,视频和文本)的大量信息的大量信息。然后分析这些信息以通知决策,例如临床诊断和产品推荐。具有不同表示的数据可能具有相同的语义信息,并且具有相当大的努力,以设计有效的搜索在具有不同模式的对象上的高效搜索方法。然而,多式联运数据承载敏感信息,维护隐私在我们的隐私感知和互联社会中至关重要。在本文中,我们将集体矩阵分解(CMF)和同型加密(HE)组合来构建高效且准确的方案,以促进跨模型检索,而不会丢失任何敏感信息。我们的方案标识统一的特征向量,为具有不同模式设置的训练中的每个对象,并获得用于超出样本对象的映射矩阵。加密过程之后,这些矩阵存储在远程云服务器(CS)上。因此,服务器可以计算任何查询的安全统一功能。在本文中,我们还使用位置敏感散列(LSH)构建了一个隐私保留索引结构,该结构提供了安全性和效率。绩效评估展示了我们在现实世界IOT应用中提出的计划的潜力。

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  • 来源
    《Internet of Things Journal, IEEE》 |2020年第4期|3104-3113|共10页
  • 作者单位

    Dalian Univ Technol Sch Software Technol Key Lab Ubiquitous Network & Serv Software Liaoni Dalian 116620 Peoples R China|Guilin Univ Elect Technol Guangxi Key Lab Trusted Software Guilin 541004 Peoples R China;

    Dalian Univ Technol Sch Software Technol Key Lab Ubiquitous Network & Serv Software Liaoni Dalian 116620 Peoples R China|Guilin Univ Elect Technol Guangxi Key Lab Trusted Software Guilin 541004 Peoples R China;

    Dalian Univ Technol Sch Software Technol Key Lab Ubiquitous Network & Serv Software Liaoni Dalian 116620 Peoples R China|Guilin Univ Elect Technol Guangxi Key Lab Trusted Software Guilin 541004 Peoples R China;

    Univ Texas San Antonio Dept Informat Syst & Cyber Secur San Antonio TX 78249 USA;

    Univ Texas San Antonio Dept Informat Syst & Cyber Secur San Antonio TX 78249 USA;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Collective matrix factorization (CMF); homomorphic encryption (HE); locality-sensitive hashing (LSH); secure cross-modal retrieval (SCMR);

    机译:集体矩阵分解(CMF);同态加密(HE);地方敏感散列(LSH);安全跨模型检索(SCMR);

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