基于邻域划分的室内定位算法研究

Zhilong Shan, Fan Zhang, Na Lv, Wan Xiang
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摘要

为了解决单纯使用KNN算法导致的参考指纹数量多导致的匹配时间长、定位不准确等问题。本文提出了一种基于KNN划分的方法。首先对指纹空间进行聚类,然后根据KNN算法在聚类区域内得到距离未知节点最近的K个节点。其次,利用K个指纹的最大值和最小值坐标确定区域,然后用牛顿插值法对该区域进行分割,形成虚拟指纹矩阵;最后利用KNN算法重新确定区域,然后利用粒子群优化算法迭代寻找该区域内的最优位置节点。实验表明,该算法能够有效地提高定位精度,减少匹配时间,特别是在参考指纹稀疏的情况下。
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Research on Indoor Positioning Algorithm Based on Neighborhood Partitioning
In order to solve the problem of long matching time caused by a large number of reference fingerprints and inaccurate positioning caused by KNN algorithm alone. A method based on KNN partitioning is proposed in this paper. Firstly, the fingerprint space is clustered, and then the K nodes closest to the unknown node are obtained in the clustered area according to KNN algorithm. Secondly, the maximum and minimum coordinates of K fingerprints are used to determine the region, and then the region is divided by Newton interpolation method to form a virtual fingerprint matrix. Finally, KNN algorithm is used to re-determine the region, and then particle swarm optimization algorithm is used to find the optimal location node in this region iteratively. Experiments show that the algorithm can improve the positioning accuracy and reduce the matching time effectively, especially when the reference fingerprints are sparse.
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