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首页> 外文期刊>ISPRS International Journal of Geo-Information >An Improved Neural Network Training Algorithm for Wi-Fi Fingerprinting Positioning
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An Improved Neural Network Training Algorithm for Wi-Fi Fingerprinting Positioning

机译:Wi-Fi指纹定位的一种改进的神经网络训练算法

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Ubiquitous positioning provides continuous positional information in both indoor and outdoor environments for a wide spectrum of location based service (LBS) applications. With the rapid development of the low-cost and high speed data communication, Wi-Fi networks in many metropolitan cities, strength of signals propagated from the Wi-Fi access points (APs) namely received signal strength (RSS) have been cleverly adopted for indoor positioning. In this paper, a Wi-Fi positioning algorithm based on neural network modeling of Wi-Fi signal patterns is proposed. This algorithm is based on the correlation between the initial parameter setting for neural network training and output of the mean square error to obtain better modeling of the nonlinear highly complex Wi-Fi signal power propagation surface. The test results show that this neural network based data processing algorithm can significantly improve the neural network training surface to achieve the highest possible accuracy of the Wi-Fi fingerprinting positioning method.
机译:无处不在的定位可在室内和室外环境中为各种基于位置的服务(LBS)应用提供连续的位置信息。随着低成本和高速数据通信的迅速发展,在许多大城市中的Wi-Fi网络中,已巧妙地采用了从Wi-Fi接入点(AP)传播的信号强度,即接收信号强度(RSS)。室内定位。本文提出了一种基于Wi-Fi信号模式神经网络建模的Wi-Fi定位算法。该算法基于神经网络训练的初始参数设置与均方误差输出之间的相关性,以获得对非线性高度复杂的Wi-Fi信号功率传播表面的更好建模。测试结果表明,这种基于神经网络的数据处理算法可以显着改善神经网络的训练面,以实现Wi-Fi指纹定位方法的最高准确性。

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