Indoor localization in multi-floor environments with reduced effort

Hua-Yan Wang, V. Zheng, Junhui Zhao, Qiang Yang
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引用次数: 64

Abstract

In pervasive computing, localizing a user in wireless indoor environments is an important yet challenging task. Among the state-of-art localization methods, fingerprinting is shown to be quite successful by statistically learning the signal to location relations. However, a major drawback for fingerprinting is that, it usually requires a lot of labeled data to train an accurate localization model. To establish a fingerprinting-based localization model in a building with many floors, we have to collect sufficient labeled data on each floor. This effort can be very burdensome. In this paper, we study how to reduce this calibration effort by only collecting the labeled data on one floor, while collecting unlabeled data on other floors. Our idea is inspired by the observation that, although the wireless signals can be quite different, the floor-plans in a building are similar. Therefore, if we co-embed these different floors' data in some common low-dimensional manifold, we are able to align the unlabeled data with the labeled data well so that we can then propagate the labels to the unlabeled data. We conduct empirical evaluations on real-world multi-floor data sets to validate our proposed method.
多楼层环境下的室内定位
在普适计算中,在无线室内环境中定位用户是一项重要但具有挑战性的任务。在最先进的定位方法中,指纹识别通过统计学习信号与位置的关系被证明是非常成功的。然而,指纹识别的一个主要缺点是,它通常需要大量的标记数据来训练准确的定位模型。为了在多层建筑中建立基于指纹的定位模型,我们必须在每层收集足够的标记数据。这项工作可能非常繁重。在本文中,我们研究了如何通过只收集一个楼层的标记数据,而在其他楼层收集未标记数据来减少这种校准工作。我们的想法来自于这样一种观察,即尽管无线信号可能差别很大,但同一栋建筑的平面图是相似的。因此,如果我们将这些不同楼层的数据共同嵌入到一些常见的低维流形中,我们就能够将未标记的数据与标记的数据很好地对齐,这样我们就可以将标签传播到未标记的数据。我们对真实世界的多层数据集进行了实证评估,以验证我们提出的方法。
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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