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SmartLoc: Smart Wireless Indoor Localization Empowered by Machine Learning

机译:SmartLoc:机器学习授权智能无线室内定位

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Recently, machine learning (ML) has been widely adopted for fingerprint-based indoor localization because of its potency in delineating relationships between received signal strength (RSS) information and labels accurately. Existing ML-based indoor localization systems are less robust because they only adopt the output with the highest probability. This affects the final location estimate, hence compromising accuracy due to the severity of RSS fluctuations. Since different ML algorithms (MLAs) yield different performances, it is therefore intuitive to fuse predictions from multiple MLAs to improve the positioning performance in the presence of signal fluctuation. In this article, we propose SmartLoc, a smart wireless indoor localization framework to enhance indoor localization. In the offline phase, multiple MLAs are trained by utilizing an offline database. We further apply probability alignment to guarantee the predicted probabilities of each MLA at the same confidence level. In the online phase, given a testing RSS sample of a user at an unknown location, we extract the labels with probabilities greater than a certain threshold from each MLA to construct the space of candidate labels (SCL). The size of SCL can be adaptively determined by using our proposed dynamic size determination algorithm. Based on the SCL, we propose a probabilistic model to intelligently estimate the user's location by evaluating the label credibility simultaneously. A high label credibility indicates that the frequently occurred label is more likely to be true. Experimental results in a real changing environment verify the superiority of SmartLoc, outperforming the best among comparative methods by 10.8% in 75th percentile accuracy.
机译:最近,由于其在准确地描绘了所接收信号强度(RSS)信息和标签之间的效力,因此已经广泛采用了机器学习(ML)的指纹室内定位。现有的基于ML的室内本地化系统不太强大,因为它们仅采用具有最高概率的输出。这会影响最终位置估计,因此由于RSS波动的严重性而受到影响的精度。由于不同的ML算法(MLAS)产生不同的性能,因此它直观地熔断来自多个MLA的预测,以改善信号波动的存在下的定位性能。在本文中,我们提出了一个智能无线室内定位框架的SmartLoc,以增强室内定位。在离线阶段,通过利用离线数据库训练多个MLA。我们进一步应用概率对齐以保证每次MLA的预测概率在相同的置信水平。在在线阶段,给定用户在未知位置测试RSS样本,我们将具有大于每个MLA的特定阈值的概率提取标签以构造候选标签(SCL)的空间。可以通过使用所提出的动态尺寸确定算法自适应地确定SCL的大小。基于SCL,我们提出了一种概率模型来智能地估计用户的位置,通过同时评估标签可信度。高标签可信度表明经常发生的标签更可能是真实的。实验结果在实际改变环境中验证了Smartloc的优越性,比较方法中最佳表现优于75百分位数的最佳精度10.8%。

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