基于图形的计步器与WiFi测量数据融合,实现移动室内定位

S. Hilsenbeck, D. Bobkov, Georg Schroth, Robert Huitl, E. Steinbach
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引用次数: 127

摘要

我们提出了一种基于图的低复杂度传感器融合方法,用于使用移动设备进行无处不在的行人室内定位。我们采用融合技术将基于步长检测的相对运动信息与WiFi信号强度测量相结合。该方法基于著名的粒子滤波方法。与以前的工作相反,我们提供了一个概率模型,用于位置估计,该模型直接建立在一个完全离散的、基于图形的室内环境表示上。我们通过室内空间的自适应量化来生成这个图,从估计问题中去除不相关的自由度。我们使用从智能手机收集的真实数据在两个现实的室内环境中评估了所提出的方法。总的来说,我们的数据集跨越了大约20公里的步行距离,包括13个用户和4种不同的移动设备类型。我们的结果表明,过滤器需要比最先进的方法少一个数量级的粒子,同时保持几米的精度。提出的低复杂性解决方案不仅可以在功能较弱的移动设备上实现室内定位,还可以为基于位置的最终用户应用程序节省急需的资源,这些应用程序运行在定位服务之上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Graph-based data fusion of pedometer and WiFi measurements for mobile indoor positioning
We propose a graph-based, low-complexity sensor fusion approach for ubiquitous pedestrian indoor positioning using mobile devices. We employ our fusion technique to combine relative motion information based on step detection with WiFi signal strength measurements. The method is based on the well-known particle filter methodology. In contrast to previous work, we provide a probabilistic model for location estimation that is formulated directly on a fully discretized, graph-based representation of the indoor environment. We generate this graph by adaptive quantization of the indoor space, removing irrelevant degrees of freedom from the estimation problem. We evaluate the proposed method in two realistic indoor environments using real data collected from smartphones. In total, our dataset spans about 20 kilometers in distance walked and includes 13 users and four different mobile device types. Our results demonstrate that the filter requires an order of magnitude less particles than state-of-the-art approaches while maintaining an accuracy of a few meters. The proposed low-complexity solution not only enables indoor positioning on less powerful mobile devices, but also saves much-needed resources for location-based end-user applications which run on top of a localization service.
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