基于加权k近邻和加权信号强度的指纹室内定位

Liwei Zhang, Changming Zhao, Yunshi Wang, Lei Dai
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引用次数: 3

摘要

在过去的几十年里,无线室内定位系统,特别是信号强度指纹技术,已经成为人们研究的重点。然而,大多数提出的解决方案需要昂贵的现场调查来构建无线电地图,该地图可用于将无线电签名与特定位置相匹配。在这项研究中,我们提出了一种新的基于指纹的室内定位方法,该方法使用加权k近邻和加权信号强度,称为WKNNS。我们根据信号的强弱来调整样本的权重:减少强信号样本的影响,增加弱信号样本的影响。首先,通过分割将强信号样本分成多个聚类。然后,对弱信号样本进行聚类。因此,多样本分类可以转化为一个二值分类问题。将该算法应用于室内定位,获得了较好的精度。通过与传统KNN算法和贝叶斯算法的比较,我们发现WKNNS经过区域划分后的定位精度要高于贝叶斯算法。经读者优化的WKNNS算法的累积误差概率分布也高于贝叶斯算法。基于指纹转换模型的WKNNS算法的定位精度高于基于信号强度指纹的定位精度。
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Fingerprint-based Indoor Localization using Weighted K-Nearest Neighbor and Weighted Signal Intensity
In the past few decades, wireless indoor positioning systems, especially signal strength fingerprint technology, have become the subject of major research efforts. However, most proposed solutions require an expensive site survey to build a radio map, which can be used to match the radio signature to a specific location. In this study, we proposed a novel fingerprint-based indoor localization using weighted K-nearest neighbor and weighted signal strength, named WKNNS. We adjust the weight of samples by the strength of the signal: reduce the influence of strong signal samples, and increase the influence of weak signal samples. First, the strong signal samples were divided into multiple clusters by dividing. Then, the weak signal samples are divided into those clusters. Thus, multi-sample classification can be turned into a binary classification problem. This algorithm was applied to indoor positioning and obtained better accuracy. Compared with the traditional KNN and Bayesian algorithms, we found that the positioning accuracy of WKNNS after region division is higher than that of Bayesian algorithm. The cumulative error probability distribution of the WKNNS algorithms optimized by the reader is also higher than Bayesian algorithm. The positioning accuracy of the WKNNS algorithm based on the fingerprint conversion model is higher than that based on the signal strength fingerprint.
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