Accurate estimation of the confidence of an indoor localization system is crucial for a number of applications including crowd-sensing applications, map-matching services, and probabilistic location fusion techniques; all of which lead to an enhanced user experience. Current approaches for quantifying the output accuracy of a localization system in real-time either do not provide a distance metric, require an extensive training process, and/or are tailored to a specific localization system. In this paper, we present the design, implementation, and evaluation of CONE: a novel calibration-free accurate confidence estimation system that can work in real-time with any location determination system. CONE builds on a sound theoretical model that allows it to trade the required user confidence with tight bound on the estimated confidence radius. We also introduce a new metric for evaluating confidence estimation systems that can capture new aspects of their performance. Evaluation of CONE on Android phones in a typical testbed using the iBeacons BLE technology with a side-by-side comparison with traditional confidence estimation techniques shows that CONE can achieve a consistent median absolute error difference accuracy of less than 2.7m while estimating the user position more than 80% of the time within the confidence circle. This is significantly better than the state-of-the-art confidence estimation systems that are tailored to the specific localization system in use. Moreover, CONE does not require any calibration and therefore provides a scalable and ubiquitous confidence estimation system for pervasive applications.
翻译:对室内本地化系统信任度的准确估计对于一些应用至关重要,这些应用包括:人群监测应用程序、地图匹配服务和概率定位合并技术;所有这些技术都导致用户经验的增强。目前对本地化系统产出准确性进行量化的方法,无论是实时还是实时,都无法提供远程测量,需要广泛的培训程序,和(或)适合特定的本地化系统。在本文件中,我们介绍了CONE的设计、实施和评估:一个新的无校准准确的准确信心估算系统,可以在任何定位确定系统中实时运作。 CORE基于一个健全的理论模型,使它能够将所需的用户信心与估计信任度半径的严格约束进行交易。我们还引入了一个新的度指标,用于评价能够捕捉其性能新方面的信任估计系统。在使用iBeacon contle技术的典型测试台中,与传统的本地范围估算技术的平行比较表明,CONEE能够实现一个比2.7m更准确的准确度一致的中位错误准确度差异,同时在估计系统内部的精确度上,而不能对用户的精确度进行精确度进行精确的估算,而在估计中度上比CONCUR的周期内则提供更精确的计算。