Accurate Device-Free Localization with Little Human Cost

Ju Wang, Binbin Xie, Dingyi Fang, Xiaojiang Chen, Chen Liu, Tianzhang Xing, Weike Nie
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引用次数: 9

Abstract

The device-free localization (DFL), i.e., localizing target without requiring target attached any devices, is attractive. Current localization methods, however, query a significant degree of pre-deployment effort, such as the transceivers' locations, the transmission power, which cost huge human effort. In this paper, we present Alico, an accurate and low human cost DFL method that does not require any pre-deployment effort, such as building the detailed fingerprints or requiring the prior knowledge of deployment. The key intuition is that (i) the distorted wireless links caused by the target, even the many from unknown locations, are constrained the presence of the target; (ii) with the increase of the number of unknown targets and transceivers, the constraints grows in a quadratic fashion, while the unknown locations of targets and transceivers grows linearly. This suggests that given enough measurements, there will be eventually enough constraints to make the every target uniquely localizable. Alico leverages these constraints and model them as a set of equations. By using a hybrid gradient descent and genetic algorithms, Alico can solve the equations and estimate the target locations accurately based just on the Received Signal Strength (RSS) measurements. Despite the absence of any explicit pre-deployment calibration effort, Alico achieves the 60th and 80th percentile errors of 1m and 1.4m in real-world experiments, respectively, which is better than the three state-of-the-art algorithms.
精确的无设备定位与很少的人力成本
无设备定位(device-free localization, DFL)是一种很有吸引力的方法,即在定位目标时不需要目标附着任何设备。然而,目前的定位方法需要大量的预先部署工作,如收发器的位置、传输功率等,这需要耗费大量的人力。在本文中,我们提出了Alico,一种准确且低人力成本的DFL方法,不需要任何部署前的努力,例如构建详细的指纹或需要预先了解部署。关键的直觉是:(i)由目标引起的扭曲无线链路,即使是许多来自未知位置的无线链路,也会受到目标存在的限制;(ii)随着未知目标和收发机数量的增加,约束条件呈二次型增长,而未知目标和收发机位置呈线性增长。这表明,给定足够的测量,最终会有足够的约束,使每个目标都是唯一可本地化的。Alico利用这些约束条件,并将其建模为一组方程。通过混合梯度下降和遗传算法,Alico可以根据接收信号强度(RSS)测量结果求解方程并准确估计目标位置。尽管没有任何明确的部署前校准工作,Alico在实际实验中分别实现了1米和1.4米的第60和第80百分位误差,优于三种最先进的算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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