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Robust Smartphone Mode Recognition

机译:强大的智能手机模式识别

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摘要

Smartphone based pedestrian dead reckoning (PDR) approach is commonly used for indoor positioning. Recognition of the smartphone mode can improve PDR positioning accuracy. In this paper, we employ machine learning classification algorithms to recognize the smartphone modes (e.g. pocket or swing) and thereby enabling the choice of a proper gain value to improve PDR positioning accuracy. In particular, we focus on two classification approaches: 1) tree based approaches: random forest, gradient boosting and CatBoost 2) neural network approaches: convolutional neural network, recurrent neural networks with long short-term memory units, gated recurrent unit and residual recurrent neural networks. Experimental results obtained using thirteen participates walking in an inhomogeneous environments and smartphone modes show successes of more than 97% in classifying the smartphone modes using neural network approaches.
机译:基于智能手机的行人航位推算(PDR)方法通常用于室内定位。识别智能手机模式可以提高PDR定位精度。在本文中,我们采用机器学习分类算法来识别智能手机模式(例如口袋或摆幅),从而能够选择合适的增益值来提高PDR定位精度。特别是,我们着重于两种分类方法:1)基于树的方法:随机森林,梯度提升和CatBoost 2)神经网络方法:卷积神经网络,具有长短期记忆单元的递归神经网络,门控递归单元和残差递归神经网络。使用13种参与者在不均匀的环境中行走而获得的实验结果和智能手机模式显示,使用神经网络方法对智能手机模式进行分类的成功率超过97%。

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