Publication | Closed Access
Experiencing and handling the diversity in data density and environmental locality in an indoor positioning service
115
Citations
37
References
2014
Year
Unknown Venue
EngineeringMachine LearningLocation EstimationLocalization TechniqueIndoor Positioning ServiceLocalizationLocation-based ServiceData ScienceLocation AwarenessLocalization ApproachesEnvironmental LocalityGeographyMobile ComputingComputer ScienceData DensityRf LocalizationSignal ProcessingEnvironment LocalityIndoor Positioning SystemLocation InformationLocation Management
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.
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