Werner Max, Bullmann Markus, Fetzer Toni, Deinzer Frank
Center for Artificial Intelligence (CAIRO), Technical University of Applied Sciences Wuerzburg-Schweinfurt (THWS), 97082 Wuerzburg, Germany.
cronn GmbH, 53227 Bonn, Germany.
Sensors (Basel). 2025 Jun 30;25(13):4092. doi: 10.3390/s25134092.
We propose a modeling approach for position estimation based on the observed radio propagation in an environment. The approach is purely similarity-based and therefore free of explicit physical assumptions. What distinguishes it from classical related methods are probabilistic position estimates. Instead of just providing a point estimate for a given signal sequence, our model returns the distribution of possible positions as continuous probability density function, which allows for appropriate integration into recursive state estimation systems. The estimation procedure starts by using a kernel to compare incoming data with reference recordings from known positions. Based on the obtained similarities, weights are assigned to the reference positions. An arbitrarily chosen density estimation method is then applied given this assignment. Thus, a continuous representation of the distribution of possible positions in the environment is provided. We apply the solution in a Particle Filter (PF) system for smartphone-based indoor localization. The approach is tested both with radio signal strength (RSS) measurements (Wi-Fi and Bluetooth Low Energy RSSI) and round-trip time (RTT) measurements, given by Wi-Fi Fine Timing Measurement. Compared to distance-based models, which are dedicated to the specific physical properties of each measurement type, our similarity-based model achieved overall higher accuracy at tracking pedestrians under realistic conditions. Since it does not explicitly consider the physics of radio propagation, the proposed model has also been shown to work flexibly with either RSS or RTT observations.
我们提出了一种基于环境中观测到的无线电传播进行位置估计的建模方法。该方法完全基于相似度,因此无需明确的物理假设。它与经典相关方法的区别在于概率位置估计。我们的模型不是只为给定信号序列提供一个点估计,而是以连续概率密度函数的形式返回可能位置的分布,这使得它能够适当地集成到递归状态估计系统中。估计过程首先使用一个核函数将传入数据与已知位置的参考记录进行比较。根据获得的相似度,为参考位置分配权重。然后在给定此分配的情况下应用任意选择的密度估计方法。这样,就提供了环境中可能位置分布的连续表示。我们将该解决方案应用于基于智能手机的室内定位的粒子滤波(PF)系统中。该方法通过无线电信号强度(RSS)测量(Wi-Fi和蓝牙低功耗RSSI)以及Wi-Fi精细定时测量给出的往返时间(RTT)测量进行了测试。与基于距离的模型不同,基于距离的模型专门针对每种测量类型的特定物理特性,我们基于相似度的模型在现实条件下跟踪行人时总体上实现了更高的精度。由于它没有明确考虑无线电传播的物理原理,所提出的模型也已被证明可以灵活地处理RSS或RTT观测值。