A passive WiFi source localization system based on fine-grained power-based trilateration

2015 IEEE 16th International Symposium on A World of Wireless, Mobile and Multimedia Networks (WoWMoM)(2015)

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摘要
Indoor localization systems become more interesting for researchers because of the attractiveness of business cases in various application fields. A WiFi-based passive localization system can provide user location information to third-party providers of positioning services. However, indoor localization techniques are prone to multipath and Non-Line Of Sight (NLOS) propagation, which lead to significant performance degradation. To overcome these problems, we provide a passive localization system for WiFi targets with several improved algorithms for localization. Through Software Defined Radio (SDR) techniques, we extract Channel Impulse Response (CIR) information at the physical layer. CIR is later adopted to mitigate the multipath fading problem. We propose to use a Nonlinear Regression (NLR) method to relate the filtered power information to propagation distances, which significantly improves the ranging accuracy compared to the commonly used log-distance path loss model. To mitigate the influence of ranging errors, a new trilateration algorithm is designed as well by combining Weighted Centroid and Constrained Weighted Least Square (WC-CWLS) algorithms. Experiment results show that our algorithm is robust against ranging errors and outperforms the linear least square algorithm and weighted centroid algorithm.
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关键词
weighted centroid algorithm,linear least square algorithm,WC-CWLS algorithm,weighted centroid and constrained weighted least square algorithm,NLR method,multipath fading problem mitigation,nonlinear regression method,CIR information extraction,channel impulse response,SDR technique,software defined radio technique,multipath propagation,nonline of sight propagation,user location information,indoor localization system,fine-grained power-based trilateration,passive Wi-Fi source localization system
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