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Crowdsensing-based WiFi Indoor Localization using Feed-forward Multilayer Perceptron Regressor

机译:使用前馈多层感知器回归算法的基于人群感知的WiFi室内定位

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Most RSS based indoor localization algorithms require the a priori knowledge of location of Access Points, timewise variation of location of user, and use of multiple sensor data. The paper proposes an innovative approach combining the Crowdsensing based wireless indoor localization technology with Artificial Neural Networks, to automatically predict new users location and analyze the effect of device heterogeneity on the RSS localization accuracy, by using cell phone user data. The performance evaluation demonstrates that the trained MLP Regression model can obtain the highest localization accuracy than the probabilistic localization algorithms, without individual model for each device in the fingerprinting database. In contrast with existing systems proposed in the literature, the result shows that our proposed approach efficiently handles very large number of Access Points in 10 times larger indoor spaces.
机译:大多数基于RSS的室内定位算法都要求先验知识,包括访问点的位置,用户位置的时间变化以及使用多个传感器数据。本文提出了一种创新的方法,将基于人群感知的无线室内定位技术与人工神经网络相结合,可以自动预测新用户的位置,并通过使用手机用户数据来分析设备异质性对RSS定位精度的影响。性能评估表明,经过训练的MLP回归模型可以比概率定位算法获得最高的定位精度,而指纹数据库中每个设备都不需要单独的模型。与文献中提出的现有系统相比,结果表明,我们提出的方法可以有效地处理10倍大室内空间中的大量接入点。

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