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首页> 外文期刊>Sensors Journal, IEEE >A Soft Range Limited K-Nearest Neighbors Algorithm for Indoor Localization Enhancement
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A Soft Range Limited K-Nearest Neighbors Algorithm for Indoor Localization Enhancement

机译:用于室内定位增强的软范围限制K最近邻算法

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This paper proposes a soft range limited K-nearest neighbors (SRL-KNNs) localization fingerprinting algorithm. The conventional KNN determines the neighbors of a user by calculating and ranking the fingerprint distance measured at the unknown user location and the reference locations in the database. Different from that method, SRL-KNN scales the fingerprint distance by a range factor related to the physical distance between the user's previous position and the reference location in the database to reduce the spatial ambiguity in localization. Although utilizing the prior locations, SRL-KNN does not require knowledge of the exact moving speed and direction of the user. Moreover, to take into account of the temporal fluctuations of the received signal strength indicator (RSSI), RSSI histogram is incorporated into the distance calculation. Actual on-site experiments demonstrate that the new algorithm achieves an average localization error of 0.66 m with 80% of the errors under 0.89 m, which outperforms conventional KNN algorithms by 45% under the same test environment.
机译:本文提出了一种软范围受限的K近邻(SRL-KNNs)定位指纹识别算法。传统的KNN通过计算和排序在数据库中未知用户位置和参考位置处测量的指纹距离来确定用户的邻居。与该方法不同,SRL-KNN通过与数据库中用户的先前位置和参考位置之间的物理距离有关的范围因子来缩放指纹距离,以减少定位的空间歧义。尽管利用了先前的位置,SRL-KNN并不需要知道用户的确切移动速度和方向。此外,考虑到接收信号强度指示符(RSSI)的时间波动,将RSSI直方图合并到距离计算中。实际的现场实验表明,新算法在0.89 m以下时平均定位误差为0.66 m,误差为80%,在相同测试环境下,其平均定位误差比传统KNN算法高45%。

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