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A model-switching sequential Monte Carlo algorithm for indoor tracking with experimental RSS data

机译:一种模型切换顺序蒙特卡罗算法,用于使用实验RSS数据进行室内跟踪

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In this paper we address the problem of indoor tracking using received signal strength (RSS) as position-dependent data. This type of measurements are very appealing because they can be easily obtained with a variety of (inexpensive) wireless technologies. However, the extraction of accurate location information from RSS in indoor scenarios is not an easy task. Due to the multipath propagation, it is hard to adequately model the correspondence between the received power and the transmitter-to-receiver distance. For that reason, we propose the use of a compound model that combines several sub-models, whose parameters are adjusted to different propagation environments. This methodology, called Interacting Multiple Models (IMM), has been used in the past either for modeling the motion of maneuvering targets or the relationship between the target position and the observations. Here, we extend its application to handle both types of uncertainty simultaneously and we refer to the resulting state-space model as a generalized IMM (GIMM) system. The flexibility of the GIMM approach is attained at the expense of an increase in the number of random processes that must be accurately tracked. To overcome this difficulty, we introduce a Rao-Blackwellized sequential Monte Carlo tracking algorithm that exhibits good performance both with synthetic and experimental data.
机译:在本文中,我们解决了使用接收信号强度(RSS)作为依赖于位置数据的室内跟踪问题。这种类型的测量非常有吸引力,因为它们可以通过各种(廉价的)无线技术容易地获得。但是,从室内方案中的RSS提取精确的位置信息并不是一项简单的任务。由于多径传播,很难充分模拟接收功率和发射机到接收器距离之间的对应关系。因此,我们建议使用组合多个子模型的复合模型,其参数调整到不同的传播环境。这种方法,称为交互多模型(IMM),过去用于建模机动目标的运动或目标位置与观察之间的关系。在这里,我们将其应用扩展到同时处理两种类型的不确定性,并将所产生的状态空间模型称为广义IMM(GIMM)系统。 GIMM方法的灵活性是以准确跟踪的随机过程数量的增加。为了克服这种困难,我们介绍了一种RAO-Blackwellized蒙特蒙特卡罗跟踪算法,其具有合成和实验数据的良好性能。

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