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A Novel WLAN Indoor Positioning Algorithm Based on Positioning Characteristics Extraction

机译:基于定位特征提取的新型WLAN室内定位算法

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Much attention has been paid to WLAN indoor positioning algorithm for its high accuracy and low cost to meet the location based services (LBS). This paper proposes a novel positioning algorithm based on positioning characteristics extraction in WLAN indoor environment. Each RSS signal from an individual access point is taken as input of the RBF neural networks to establish the mapping between RSS signal and position coordinate. The RSS signal with the lower training error is selected as the positioning characteristic for its strong dependency with position. Then all the selected RSS signals are combined to train the RBF neural networks for indoor positioning. Experimental results show that much higher positioning accuracy is obtained by the proposed algorithm than traditional positioning algorithms.
机译:WLAN室内定位算法以其高精度和低成本来满足基于位置的服务(LBS),已经引起了人们的广泛关注。提出了一种基于WLAN室内环境中定位特征提取的新型定位算法。来自单个访问点的每个RSS信号均被用作RBF神经网络的输入,以建立RSS信号与位置坐标之间的映射。选择训练误差较小的RSS信号作为定位特性,因为它对位置的依赖性强。然后将所有选定的RSS信号组合起来,以训练RBF神经网络进行室内定位。实验结果表明,与传统的定位算法相比,该算法具有更高的定位精度。

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