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首页> 外文期刊>Internet of Things Journal, IEEE >A Compressive Sensing Approach to Detect the Proximity Between Smartphones and BLE Beacons
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A Compressive Sensing Approach to Detect the Proximity Between Smartphones and BLE Beacons

机译:一种检测智能手机和BLE信标之间距离的压缩传感方法

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摘要

Bluetooth low energy (BLE) beacons have been widely deployed to deliver proximity-based services (PBSs) to user's smartphones when users are in the proximity of a beacon. Conventional proximity detection simply uses the received signal strength (RSS) to infer the proximity, and then retrieves the PBS by mapping the beacon ID with the corresponding service in the cloud database. Such an approach suffers two major issues: 1) the severe RSS fluctuation might confuse the smartphone during the detection and 2) a malicious PBS can be delivered by manipulating the same beacon ID. This paper proposes RF fingerprinting to label a beacon with an N-dimensional fingerprint vector, which consists of N RSS values from N deployed beacons. The contribution of our proposed method is twofold: 1) we infer the proximity based on the fingerprint vector instead of relying solely on the single RSS value and 2) we retrieve the PBS by mapping the fingerprint vector instead of the hard-coded beacon ID. The challenge with our proposed approach is the incomplete fingerprint observation during real-time detection, resulting in an underdetermined proximity detection problem. To this end, we exploit the compressive sensing (CS) approach based on the differential evolutional algorithm to address such an underdetermined problem. Extensive simulations with real-world datasets show that our proposed approach outperforms the legacy machine learning techniques with substantial performance gains.
机译:蓝牙低功耗(BLE)信标已被广泛部署,以便在用户接近信标时向用户的智能手机提供基于接近度的服务(PBS)。常规的接近度检测仅使用接收信号强度(RSS)来推断接近度,然后通过将信标ID与云数据库中的相应服务进行映射来检索PBS。这种方法遇到两个主要问题:1)RSS的严重波动可能会在检测期间使智能手机困惑; 2)可以通过操纵相同的信标ID来传送恶意PBS。本文提出了一种RF指纹识别技术,以一个带有N维指纹矢量的信标来标记信标,该维矢量由来自N个部署信标的N个RSS值组成。我们提出的方法的贡献是双重的:1)我们基于指纹矢量推断邻近度,而不是仅仅依靠单个RSS值; 2)我们通过映射指纹矢量而非硬编码信标ID来检索PBS。我们提出的方法所面临的挑战是实时检测过程中的指纹观察不完整,从而导致不确定的邻近检测问题。为此,我们利用基于差分进化算法的压缩感知(CS)方法来解决这种不确定的问题。对真实数据集的大量仿真表明,我们提出的方法在性能上获得了明显优于传统的机器学习技术。

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