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Enabling Secure and Fast Indexing for Privacy-Assured Healthcare Monitoring via Compressive Sensing

机译:通过压缩传感为安全性高的医疗保健监控启用安全和快速索引编制

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摘要

As e-health technology continues to advance, health related multimedia data is being exponentially generated from healthcare monitoring devices and sensors. Coming with it are the challenges on how to efficiently acquire, index, and process such a huge amount of data for effective healthcare and related decision making, while respecting user's data privacy. In this paper, we propose a secure cloud-based framework for privacy-aware healthcare monitoring systems, which allows fast data acquisition and indexing with strong privacy assurance. For efficient data acquisition, we adopt compressive sensing for easy data sampling, compression, and recovery. We then focus on how to secure and fast index the resulting large amount of continuously generated compressed samples, with the goal to achieve secure selected retrieval over compressed storage. Among others, one particular challenge is the practical demand to cope with the incoming data samples in high acquisition rates. For that problem, we carefully exploit recent efforts on encrypted search, efficient content-based indexing techniques, and fine-grained locking algorithms, to design a novel encrypted index with high-performance customization. It achieves memory efficiency, provable security, as well as greatly improved building speed with nontrivial multithread support. Comprehensive evaluations on Amazon Cloud show that our encrypted design can securely index 1 billion compressed data samples within only 12 min, achieving a throughput of indexing almost 1.4 million encrypted samples per second. Accuracy and visual evaluation on a real healthcare dataset shows good quality of high-value retrieval and recovery over encrypted data samples.
机译:随着电子医疗技术的不断发展,与健康相关的多媒体数据正以指数形式从医疗监控设备和传感器生成。随之而来的是如何在尊重用户数据隐私的同时,如何有效地获取,索引和处理如此大量的数据以进行有效的医疗保健和相关决策,所面临的挑战。在本文中,我们提出了一种用于隐私保护的医疗监控系统的基于云的安全框架,该框架允许快速的数据获取和索引以及强大的隐私保证。为了高效地获取数据,我们采用压缩感测,以便于数据采样,压缩和恢复。然后,我们将重点关注如何保护并快速索引生成的大量连续生成的压缩样本,以期在压缩存储上实现安全的选定检索。其中一个特别的挑战是以高采集速率应对输入数据样本的实际需求。针对该问题,我们仔细研究了最近在加密搜索,有效的基于内容的索引技术以及细粒度的锁定算法方面的工作,以设计出具有高性能自定义功能的新型加密索引。通过非平凡的多线程支持,它可以实现内存效率,可证明的安全性,并大大提高了构建速度。对Amazon Cloud的全面评估表明,我们的加密设计仅在12分钟内就可以安全地索引10亿个压缩数据样本,从而实现每秒索引近140万个加密样本的吞吐量。真实医疗数据集的准确性和视觉评估显示了对加密数据样本进行高价值检索和恢复的高质量。

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