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WiFi Indoor Positioning Algorithm Based on Machine Learning

机译:基于机器学习的WiFi室内定位算法

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摘要

The time-varying Received Signal Strength (RSS) drastically reduces the correlation between signals and location information, which leads to degrade the indoor positioning accuracy in WiFi. And the kernel selection of Support Vector Regression (SVR) is limited by the Mercer theorem, it has a negative influence on the regressive result. In this paper, a new positioning algorithm based on Kernel Direct Discriminant Analysis (KDDA) and Relevance Vector Regression (RVR) is proposed to resolve these problems. The proposed algorithm employs KDDA to reconstruct the localization information contained in the RSS readings. The most discriminative localization features are then extracted while the redundant localization features and noise are discarded by KDDA. The extracted localization features are taken as inputs to RVR learning machine and the mapping between localization features and physical locations is established. The experimental results show that the proposed algorithm obtains more significant accuracy improvement than existing WKNN methods and KDDA-SVR algorithm.
机译:时变接收信号强度(RSS)大大降低了信号和位置信息之间的相关性,这导致在WiFi中降低室内定位精度。并且支持向量回归(SVR)的内核选择受Mercer定理的限制,它对回归结果产生负面影响。本文提出了一种基于核直接判别分析(KDDA)和相关矢量回归(RVR)的新定位算法来解决这些问题。所提出的算法采用KDDA重建RSS读数中包含的本地化信息。然后提取最辨别的本地化特征,而KDDA丢弃冗余定位特征和噪声。提取的本地化特征被视为RVR学习机的输入,并且建立了本地化特征和物理位置之间的映射。实验结果表明,该算法比现有的WKNN方法和KDDA-SVR算法获得更高的精度改善。

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