Abstract

Device-free localization (DFL) is a new technique which can estimate the target location through analyzing the shadowing effect on surrounding radio frequency (RF) links. In a relatively complex environment, the influences of random disturbance and the multipath effect are more serious. There are kinds of noises and disturbances in the received signal strength (RSS) data of RF links and the data itself can even be distorted, which will seriously affect the DFL accuracy. Most of the common filtering methods adopted in DFL field are not targeted and the filtering effects are unstable. This paper researches the characteristics of RSS data with random disturbances and proposes two-dimensional double correlation (TDDC) distributed wavelet filtering. It can filter out the random disturbances and noise while preserving the RSS fluctuations which are helpful for the DFL, thus improving the quality of RSS data and localization accuracy. Furthermore, RSS variation rules for the links are different in complex environments and hence, it is difficult for the collected training samples to cover all possible patterns. Therefore, a single machine learning model with poor generalization ability finds it difficult to achieve ideal localization results. In this paper, the Adaboost.M2 ensemble learning model based on the Gini decision tree (GDTE) is proposed to improve the generalization ability for unknown patterns. Extensive experiments performed in two different drawing rooms demonstrate that the TDDC distributed wavelet filtering and the GDTE localization model have obvious advantages compared with other methods. The localization accuracy rates of 87% and 95% can be achieved respectively in the two environments.

Highlights

  • Device-free Localization (DFL) based on the shadow effect of the received signal strength (RSS)has been widely studied [1]

  • The Adaboost.M2 [6,7] ensemble learning model based on the Gini decision tree (GDTE) is proposed in this paper

  • Based on the above discussion, a two-dimensional double correlation (TDDC) distributed wavelet filtering and the localization model of Adaboost.M2 ensemble learning model based on the Gini decision tree (GDTE) are proposed in this paper

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Summary

Introduction

Device-free Localization (DFL) based on the shadow effect of the received signal strength (RSS). AtOverall, present,the many researchers have focusedofonnormal the localization method and model, but thereare have frequencies and amplitudes fluctuations and random disturbances been few studies on filtering and optimization for RSS data . With studies of correlations and pseudo-correlations of time-series data, a TDDC distributed wavelet filtering algorithm is proposed, which can better refine the detailed coefficient in the wavelet coefficients, and obtain more accurate characteristics of the interference to achieve the adaptive filtering threshold. It can preserve the normal fluctuations, as much as possible.

Related Work
System Architecture and Motivation
System Architecture
TDDC Distributed Wavelet Filtering
GDTE Localization Model
Description of the Experiment
Performance Comparison
Findings
Conclusions
Full Text
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