Filip Lemic, Jasper Busch, Mikolaj Chwalisz, V. Handziski, A. Wolisz
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引用次数: 38
摘要
基于射频的室内定位解决方案的激增增加了对测试系统的需求,这些测试系统能够客观评估其功能和非功能特性。我们介绍了一个测试平台和云基础设施,以支持在受控干扰下基于射频的室内定位解决方案的自动化基准测试。为了评估射频干扰对基准解决方案性能的影响,基础设施利用了各种干扰产生和监控设备。基础架构使用定义良好的接口从被测系统(System Under Test, SUT)中获得位置估计,然后在专用的度量计算引擎中处理这些估计,并存储在专用引擎中以存储基准测试实验的结果。该基础设施还包括一个机器人移动平台,该平台作为参考定位系统,可以以自主和可重复的方式运输评估的室内定位解决方案的定位设备。我们展示了自主移动平台在两种不同设置下的精度,表明该平台提供的位置估计可以作为基于射频的室内定位解决方案基准测试的参考定位系统。测试结果以及基准测试实验的原始数据可以存储到专用的公共可用服务中,从而有机会重用相同的数据来对不同的解决方案进行基准测试。最后,我们介绍了测试平台和云基础设施在四种不同干扰场景下基于WiFi指纹的室内定位解决方案的基准测试用例中的功能。
Infrastructure for benchmarking RF-based indoor localization under controlled interference
The proliferation of RF-based indoor localization solutions raises the need for testing systems that enable objective evaluation of their functional and non functional properties. We introduce a testbed and cloud infrastructure for supporting automatized benchmarking of RF-based indoor localization solutions under controlled interference. For evaluating the impact of RF interference on the performance of benchmarked solution, the infrastructure leverages various interference generation and monitoring devices. The infrastructure obtains location estimates from the System Under Test (SUT) using a well defined interface, and the estimates are subsequently processed in a dedicated metrics computation engine and stored in the dedicated engine for storing the results of benchmarking experiments. The infrastructure further includes a robotic mobility platform which serves as a reference localization system and can transport the localized device of the evaluated indoor localization solution in an autonomous and repeatable manner. We present the accuracy of our autonomous mobility platform in two different setups, showing that, due to the high accuracy, the location estimation provided by the platform can be considered as the reference localization system for benchmarking of RF-based indoor localization solutions. The results, as well as the raw data from the benchmarking experiments, can be stored into the dedicated publicly available services which gives the opportunity of reusing the same data for benchmarking different solutions. Finally, we present the capabilities of the testbed and cloud infrastructure on the use-case of benchmarking of an example WiFi fingerprinting-based indoor localization solution in four different interference scenarios.