Device-Free Localization Based on CSI Fingerprints and Deep Neural Networks

Rui Zhou, Meng Hao, Xiang Lu, Mingjie Tang, Yang Fu
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引用次数: 40

Abstract

Localization is of key importance to a variety of applications. Most previous approaches require the objects to carry electronic devices, while on many occasions device-free localization are in need. This paper proposes a device-free localization method based on WiFi Channel State Information (CSI) and Deep Neural Networks (DNN). In the area covered with WiFi, human movements may cause observable variations of WiFi signals. By analyzing the CSI fingerprint patterns and modelling the dependency between CSI fingerprints and locations through deep neural networks, the proposed method is able to estimate the objects' locations according to the measured CSI fingerprints through DNN regression. To cope with the noisy WiFi channels and remove the non-contributing information, the proposed method applies Density-Based Spatial Clustering of Applications with Noise (DBSCAN) to reduce the noise in the raw CSI data, and applies Principal Component Analysis (PCA) to extract the most contributing information in the CSI data. Evaluations in two representative scenarios achieved the mean distance error of 1.08 m and 1.50 m, respectively.
基于CSI指纹和深度神经网络的无设备定位
本地化对各种应用程序都非常重要。以前的大多数方法都要求物体携带电子设备,而在许多情况下需要无设备定位。提出了一种基于WiFi信道状态信息(CSI)和深度神经网络(DNN)的无设备定位方法。在有WiFi覆盖的区域内,人的活动可能会引起WiFi信号的明显变化。该方法通过对CSI指纹模式进行分析,并通过深度神经网络对CSI指纹与位置的依赖关系进行建模,通过深度神经网络回归,能够根据实测的CSI指纹估计出目标的位置。该方法采用基于密度的带噪声应用空间聚类(DBSCAN)方法降低原始CSI数据中的噪声,并采用主成分分析(PCA)方法提取CSI数据中贡献最大的信息,以应对WiFi信道中的噪声并去除非贡献信息。在两个代表性场景下的评估平均距离误差分别为1.08 m和1.50 m。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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