通过传感器辅助粒子过滤器和2.5维空间的平面图进行无线位置跟踪

Chi-Chung Lo, Ting-Hui Chiang, Tsu-Kuang Lee, Ling-Jyh Chen, Y. Tseng
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引用次数: 7

摘要

室内定位系统最近引起了相当大的关注。很多工作都是利用现有基站的无线信号来跟踪用户的位置。这种系统面临的主要挑战是信号漂移问题。将跟踪的无线信号与惯性传感数据融合是解决这一问题的一个有希望的方向。在这项工作中,我们考虑在多层建筑中进行位置跟踪,我们称之为2.5维空间,通过将无线信号,惯性传感数据和2.5维空间的室内平面图作为输入,并建立SPF(传感器辅助粒子滤波)模型来融合这些数据。惯性传感器是用来捕捉人体移动的,而粒子则反映了我们对用户潜在位置的信念。我们的工作有以下贡献。首先,我们提出了一个模型,将一个2.5维空间划分为多个楼层,通过楼梯和电梯连接,并进一步将每一层根据其平面划分为通过通道连接的逻辑单元。其次,基于2.5D空间模型,我们提出了利用无线信号强度和惯性传感数据对逻辑单元进行粒子采样和重采样的机制,以调整我们对用户潜在位置的信念。第三,为了解决信号漂移问题,我们提出了一种基于用户在地面/楼梯上行走和乘坐电梯的活动来控制粒子分布的加权机制。开发了一个原型并进行了测试,以验证该模型及其准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Wireless location tracking by a sensor-assisted particle filter and floor plans in a 2.5-D space
Indoor localization systems have attracted considerable attention recently. A lot of works have used wireless signals from existing base stations to track users' locations. The major challenge to such systems is the signal-drifting problem. A promising direction to conquer this problem is to fuse the tracked wireless signals with inertial sensing data. In this work, we consider location tracking in a multi-floor building, which we call a 2.5-D space, by taking wireless signals, inertial sensing data, and indoor floor plans of a 2.5-D space as inputs and building a SPF (sensor-assisted particle filter) model to fuse these data. Inertial sensors are to capture human mobility, while particles reflect our belief of the user's potential locations. Our work makes the following contributions. First, we propose a model to partition a 2.5-D space into multiple floors connected by stairs and elevators and further partition each floor, according to its floor plan, into logical units connected by passages. Second, based on the 2.5D space model, we then propose particle sampling and resampling mechanisms over the logical units using wireless signal strengths and inertial sensing data to adjust our beliefs of the user's potential locations. Third, to conquer the signal-drifting problem, we propose a weighting mechanism to control the distribution of particles based on user's activities of walking on grounds/stairs and taking elevators. A prototype has been developed and tested to verify the model and its accuracy.
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