Experiencing and handling the diversity in data density and environmental locality in an indoor positioning service

Liqun Li, G. Shen, Chunshui Zhao, T. Moscibroda, Jyh-Han Lin, Feng Zhao
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引用次数: 114

Abstract

Diversity in training data density and environment locality is intrinsic in the real-world deployment of indoor localization systems and has a major impact on the performance of existing localization approaches. In this paper, through micro-benchmarks, we find that fingerprint-based approaches are preferable in scenarios where a dense database is available; while model-based approaches are the method of choice in the case of sparse data. It should be noted, however, that practical situations are complex. A single deployment often features both sparse and dense sampled areas. Furthermore, the internal layout affects the propagation of radio signals and exhibits environmental impacts. A certain number of measurement samples may be sufficient for one part of the building, but entirely insufficient for another. Thus, finding the right indoor localization algorithm for a given large-scale deployment is challenging, if not impossible; there is no one-size-fits-all indoor localization approach. Realizing the fundamental fact that the quality of the location database capturing the actual radio map dictates localization accuracy, in this paper, we propose Modellet, an algorithmic approach that optimally approximates the actual radio map by unifying model-based and fingerprint-based approaches. Modellet represents the radio map using a fingerprint-cloud that incorporates both measured real fingerprints and virtual fingerprints, which are computed from models with a local support, based on the key concept of the supporting set. We evaluate Modellet with data collected from an office building as well as 13 large-scale deployment venues (shopping malls and airports), located across China, U.S., and Germany. Comparing Modellet with two representative baseline approaches, RADAR and EZPerfect, demonstrates that Modellet effectively adapts to different data densities and environmental conditions, substantially outperforming existing approaches.
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体验和处理室内定位服务中数据密度和环境位置的多样性
训练数据密度和环境局部性的多样性在室内定位系统的实际部署中是固有的,并且对现有定位方法的性能有重大影响。在本文中,通过微基准测试,我们发现基于指纹的方法在密集数据库可用的场景中更可取;而基于模型的方法是稀疏数据情况下的首选方法。但是,应当指出,实际情况是复杂的。单个部署通常具有稀疏和密集采样区域的特征。此外,内部布局影响无线电信号的传播并表现出环境影响。一定数量的测量样本可能对建筑物的某一部分足够,但对另一部分则完全不够。因此,为给定的大规模部署找到正确的室内定位算法是具有挑战性的,如果不是不可能的话;没有放之四海而皆准的室内定位方法。认识到位置数据库捕获实际无线电地图的质量决定了定位精度的基本事实,在本文中,我们提出了Modellet,这是一种通过统一基于模型和基于指纹的方法来最佳地接近实际无线电地图的算法方法。Modellet使用包含测量的真实指纹和虚拟指纹的指纹云来表示无线电地图,这些指纹云是基于支持集的关键概念,从具有局部支持的模型中计算出来的。我们使用从中国、美国和德国的一栋办公楼以及13个大型部署场所(购物中心和机场)收集的数据来评估Modellet。将Modellet与两种具有代表性的基线方法RADAR和EZPerfect进行比较,可以发现Modellet能够有效地适应不同的数据密度和环境条件,大大优于现有方法。
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