基于CNN的室内RSS时间序列定位

Mai Ibrahim, Marwan Torki, Mustafa ElNainay
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引用次数: 109

摘要

由于最近移动设备的进步和基于位置的服务数量的增加,移动节点的室内定位受到了极大的关注。基于Wifi接收信号强度(RSS)的指纹识别因其简单、硬件要求低而被广泛应用于室内定位。但是,由于衰落和多径现象引起的RSS值的随机波动对其定位精度有很大影响。提出了一种基于卷积神经网络(CNN)的室内定位方法,该方法利用无线局域网(WLAN)接入点的RSS时间序列进行室内定位。将CNN应用于RSS读数的时间序列,有望降低单独RSS值中存在的噪声和随机性,从而提高定位精度。在UJIIndoorLoc数据集上对该模型进行了实现和评估。该方法对建筑物的预测精度为100%,对楼层的预测精度为100%,坐标估计的平均误差为2.77 m。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CNN based Indoor Localization using RSS Time-Series
Indoor localization of mobile nodes is receiving great interest due to the recent advances in mobile devices and the increasing number of location-based services. Fingerprinting based on Wifi received signal strength (RSS) is widely used for indoor localization due to its simplicity and low hardware requirements. However, its positioning accuracy is significantly affected by random fluctuations of RSS values caused by fading and multi-path phenomena. This paper presents a convolutional neural network (CNN) based approach for indoor localization using RSS time-series from wireless local area network (WLAN) access points. Applying CNN on a time-series of RSS readings is expected to reduce the noise and randomness present in separate RSS values and hence improve the localization accuracy. The proposed model is implemented and evaluated on a multi-building and multi-floor dataset, UJIIndoorLoc dataset. The proposed approach provides 100% accuracy for building prediction, 100% accuracy for floor prediction and the mean error in coordinates estimation is 2.77 m.
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