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The indoor positioning algorithm research based on improved location fingerprinting

机译:基于改进位置指纹识别的室内定位算法研究

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It is the key point of the final precise of positioning that whether the positioning fingerprint database created by location fingerprinting can accurately reflect the mapping relationship between the position and the fingerprints signal. In order to improve the accuracy of indoor positioning, the mean smoothing algorithm is used to process the collected data during the building of WLAN indoor fingerprint database rather than mean value. Eliminating the gross error is necessary before processing data with mean smoothing algorithm. Meanwhile, this paper proposes an improved KNN algorithm, which is to weigh the difference of the test point and the reference point, then choose the appropriate value ofα. The algorithm is based on the constructing indoor wireless network with wireless routers and collecting the signal strength of the five wireless routers. Through the comparison with the accuracy of the commonly used indoor positioning algorithms, the results show that the positioning accuracy of the error distance within 3.6m can reach 90%, and within 4.8m can reach 97%.
机译:它是定位的最终精确的关键点,即由位置指纹创建的定位指纹数据库是否可以精确地反映位置和指纹信号之间的映射关系。为了提高室内定位的准确性,平均平滑算法用于在建筑物的WLAN室内指纹数据库而不是平均值期间处理收集的数据。在处理具有平均平滑算法的数据之前,必须消除总误差。同时,本文提出了一种改进的KNN算法,它是权衡测试点和参考点的差异,然后选择适当的α值。该算法基于具有无线路由器的构建室内无线网络,并收集五种无线路由器的信号强度。通过与常用室内定位算法的准确性的比较,结果表明3.6米内的误差距离的定位精度可以达到90%,在4.8米以内可达到97%。

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