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Low-Complexity Privacy-Preserving Compressive Analysis Using Subspace-Based Dictionary for ECG Telemonitoring System

机译:使用基于子空间的字典进行ECG远程监视系统的低复杂度隐私保护压缩分析

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摘要

Compressive sensing (CS) is attractive in long-term electrocardiography (ECG) telemonitoring to extend life-time for resource-constrained wireless wearable sensors. However, the availability of transmitted personal information has posed great concerns for potential privacy leakage. Moreover, the traditional CS-based security frameworks focus on secured signal recovery instead of privacy-preserving data analytics; hence, they provide only computational secrecy and have impractically high complexities for decryption. In this paper, to protect privacy from an information-theoretic perspective while delivering the classification capability, we propose a low-complexity framework of Privacy-Preserving Compressive Analysis (PPCA) based on subspace-based representation. The subspace-based dictionary is used for both encrypting and decoding the CS measurements online, and it is built by dividing signal space into discriminative and complementary subspace offline. The encrypted signal is unreconstructable even if the eavesdropper cracks the measurement matrix and the dictionary. PPCA is implemented in ECG-based atrial fibrillation detection. It can reduce the mutual information by 1.98 bits via encrypting measurements with signal-dependent noise at 1 dB, while the classification accuracy remains 96.05% with the decoding matrix. Furthermore, by decoding via matrix-vector product, rather than sparse coding, this computational complexity of PPCA is 341 times fewer compared with the traditional CS-based security.
机译:压缩感测(CS)在长期心电图(ECG)远程监控中很有吸引力,可以延长资源受限的无线可穿戴式传感器的使用寿命。然而,所传输的个人信息的可用性已引起潜在的隐私泄露的巨大关注。此外,传统的基于CS的安全框架专注于安全信号恢复,而不是保护隐私的数据分析。因此,它们仅提供计算保密性,并且解密具有不切实际的高复杂性。在本文中,为了在提供分类功能的同时从信息理论的角度保护隐私,我们提出了一种基于子空间表示的低复杂度的隐私保护压缩分析(PPCA)框架。基于子空间的字典用于在线加密和解码CS测量,它是通过将信号空间划分为可区分的和互补的子空间离线构建的。即使窃听者破解了测量矩阵和字典,加密的信号也是不可重构的。 PPCA在基于ECG的房颤检测中实施。通过使用1 dB的信号相关噪声进行加密测量,可以将互信息减少1.98位,而使用解码矩阵,分类精度保持96.05%。此外,通过矩阵向量乘积而不是稀疏编码进行解码,与传统的基于CS的安全性相比,PPCA的这种计算复杂度降低了341倍。

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  • 作者单位

    Graduate Institute of Electronics Engineering and the Department of Electrical Engineering, National Taiwan University, Taipei, Taiwan;

    Graduate Institute of Electronics Engineering and the Department of Electrical Engineering, National Taiwan University, Taipei, Taiwan;

    Graduate Institute of Electronics Engineering and the Department of Electrical Engineering, National Taiwan University, Taipei, Taiwan;

    Graduate Institute of Electronics Engineering and the Department of Electrical Engineering, National Taiwan University, Taipei, Taiwan;

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  • 正文语种 eng
  • 中图分类
  • 关键词

    Dictionaries; Decoding; Electrocardiography; Data privacy; Privacy; Cryptography;

    机译:词典;解码;心电图学;数据隐私;隐私权;密码学;

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