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Spatial Aware Signal Space Clustering algorithm for optimal calibration point locations in location fingerprinting

机译:用于位置指纹识别中最佳校准点位置的空间感知信号空间聚类算法

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Location fingerprinting provides localization for devices in indoor environments using existing Wireless Local Area Network (WLAN) infrastructure. However, the initial offline calibration which is required for these types of systems is non-trivial and requires significant labour cost. The current practice is to collect measurements at calibration points in a uniform grid for the area which is covered by the radio map. However, not all calibration points are resolvable in signal space and addition of unresolvable calibration points does not improve the localization accuracy. This paper presents Spatial Aware Signal Space Clustering (S3C) clustering algorithm which analyses walk test data for identifying these unresolvable calibration points prior to calibration phase. Simulation based studies shows that the algorithm is able to reduce the labour cost of calibration phase while preserving the localization accuracy.
机译:位置指纹技术使用现有的无线局域网(WLAN)基础结构为室内环境中的设备提供了本地化。然而,这些类型的系统所需的初始离线校准并非易事,并且需要大量的人工成本。当前的做法是在无线电地图覆盖的区域的统一网格中的校准点处收集测量值。但是,并非所有校准点都可以在信号空间中解析,并且添加无法解析的校准点不会提高定位精度。本文提出了空间感知信号空间聚类(S3C)聚类算法,该算法分析步行测试数据,以在校准阶段之前识别出这些无法解决的校准点。基于仿真的研究表明,该算法能够在保持定位精度的同时降低校准阶段的人工成本。

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