Environment cross validation of NLOS machine learning classification/mitigation in low-cost UWB positioning systems
收藏IEEE2020-02-02 更新2026-04-17 收录
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https://ieee-dataport.org/open-access/environment-cross-validation-nlos-machine-learning-classificationmitigation-low-cost-uwb
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资源简介:
Indoor positioning systems based on radio frequency systems such as UWB inherently present multipath related phenomena. This causes ranging systems such as UWB}to lose accuracy by detecting secondary propagation paths between two devices. If a positioning algorithm uses ranging measurements without considering these phenomena, it will make important errors in estimating the position. This work analyzes the performance obtained in a localization system when combining location algorithms with machine learning techniques for a previous classification and mitigation of the propagation effects. For this purpose, real cross scenarios are considered, where the data extracted from UWB low-cost devices for the training of the algorithms come from different environments than those considered for the real application and its analysis.
提供机构:
University of A Coruña
创建时间:
2020-02-02



