While a vast number of location-based services appeared lately, indoor positioning solutions are developed to provide reliable position information in environments where traditionally used satellite-based positioning systems cannot provide access to accurate position estimates. Indoor positioning systems can be based on many technologies; however, radio networks and more precisely Wi-Fi networks seem to attract the attention of a majority of the research teams. The most widely used localization approach used in Wi-Fi-based systems is based on fingerprinting framework. Fingerprinting algorithms, however, require a radio map for position estimation. This paper will describe a solution for dynamic radio map creation, which is aimed to reduce the time required to build a radio map. The proposed solution is using measurements from IMUs (Inertial Measurement Units), which are processed with a particle filter dead reckoning algorithm. Reference points (RPs) generated by the implemented dead reckoning algorithm are then processed by the proposed reference point merging algorithm, in order to optimize the radio map size and merge similar RPs. The proposed solution was tested in a real-world environment and evaluated by the implementation of deterministic fingerprinting positioning algorithms, and the achieved results were compared with results achieved with a static radio map. The achieved results presented in the paper show that positioning algorithms achieved similar accuracy even with a dynamic map with a low density of reference points.
翻译:虽然最近出现了大量基于定位的服务,但室内定位解决方案的开发是为了在传统上使用的基于卫星的定位系统无法提供准确位置估计的环境下提供可靠的定位信息;室内定位系统可以基于许多技术;然而,无线电网络和更精确的Wi-Fi网络似乎吸引了大多数研究团队的注意;Wi-Fi系统中最广泛使用的本地化方法以指纹鉴定框架为基础;但指纹打印算法需要一张用于定位估计的无线电地图。本文将描述动态无线电地图创建的解决方案,目的是缩短建立无线电地图所需的时间。拟议解决方案使用IMUs(不透明计量单位)的测量,这些测量采用粒子过滤器进行处理,采用无效的算法进行计算;执行的死盘算法产生的参考点随后由拟议的参考点合并算法进行处理,以便优化无线电地图的大小和合并类似的RPS。拟议解决方案将在现实环境中进行测试,并通过实施确定性定位定位定位算法来评估。所实现的解决方案将使用IMUMUS的测量结果与已实现的静态图像进行对比。