AutLoc:深度自动编码器室内定位与RSS指纹

Jing Liu, Nan Liu, Zhiwen Pan, X. You
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引用次数: 21

摘要

基于Wi-Fi的室内定位由于其在许多室内环境中无处不在的接入而引起了人们的极大兴趣。然而,复杂的室内传播环境导致接收信号强度(RSS)变化,从而降低了精度。在本文中,我们提出利用一个自编码器,通过预处理有噪声的RSS来提高室内定位的精度。AutLoc系统包括离线培训阶段和在线本地化阶段。在离线训练阶段,我们训练深度自编码器对测量数据去噪,然后根据训练的权值构建RSS指纹。在在线定位阶段,我们采用随机森林回归、多人感知机分类和多人感知机回归三种机器学习算法来估计位置。对三种算法的结果进行平均,得到最终的估计位置。仿真结果证明了AutLoc系统在大量场景下优于以往室内定位方案的优越性。
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AutLoc: Deep Autoencoder for Indoor Localization with RSS Fingerprinting
Wi-Fi based indoor localization has attracted great interest due to its ubiquitous access in many indoor environ- ments. However, the accuracy is deteriorated by the complex indoor propagation environments, which result in variable received signal strength (RSS). In this paper, we propose to utilize an autoencoder to improve the accuracy of indoor localization by preprocessing the noisy RSS. The AutLoc system includes an offline training phase and an online localization phase. In the offline training phase, we train the deep autoencoder to denoise the measured data and then build the RSS fingerprints according to the trained weights. In the online localization phase, we adopt three machine learning algorithms, which are random forest regression, multi-player perceptron classification and multi-player perceptron regression, to estimate the location. Averaging over the results of three algorithms, we then obtain the final estimated location. Simulation results justify superiority of the proposed AutLoc system over previous indoor location schemes in vast scenarios.
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