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Indoor Localization by Fusing a Group of Fingerprints Based on Random Forests

机译:通过融合基于随机森林的一组指纹进行室内定位

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摘要

Indoor localization is becoming critical to empower Internet of Things for various applications, such as asset tracking, autonomous parking, virtual reality, context awareness, condition monitoring, geolocation, smart manufacturing, as well as smart cities. It is well known that indoor localization based on some single fingerprints is rather susceptible to the changing environment. The efficiency of building single fingerprints from one localization system is also low. Recently, we first proposed a group of fingerprints (GOOF) based localization to improve the efficiency of building fingerprints, and then proposed an efficient fusion algorithm, namely, multiple classifiers multiple samples (MUCUS), to improve the accuracy of localization. However, the main drawbacks of MUCUS are the low localization efficiency and low accuracy when all classifiers show poor performance simultaneously. In this paper, based on the aforementioned GOOF, we propose a sliding window aided mode-based (SWIM) fusion algorithm to balance the localization accuracy and efficiency. SWIM first adopts windowing and sliding techniques to improve the localization efficiency, and then obtains a more accurate estimate by minimizing the entropy of multiple classifiers or multiple samples. This can guarantee our estimator to be robust to changing environment and larger noise level. We demonstrate the performance of our algorithms through simulations and real experimental data via two universal software radio peripheral platforms.
机译:室内本地化对于为各种应用程序(例如资产跟踪,自动泊车,虚拟现实,上下文感知,状态监视,地理位置,智能制造以及智能城市)提供支持的关键变得日益重要。众所周知,基于某些单个指纹的室内定位相当容易受到环境变化的影响。从一个本地化系统构建单个指纹的效率也很低。最近,我们首先提出了一种基于指纹组的定位方法,以提高构建指纹的效率,然后提出了一种有效的融合算法,即多分类器多个样本(MUCUS),以提高定位精度。但是,当所有分类器同时显示较差的性能时,MUCUS的主要缺点是定位效率低和准确性低。本文基于上述GOOF,提出了一种基于滑动窗口辅助模式的融合算法,以平衡定位精度和效率。 SWIM首先采用开窗和滑动技术来提高定位效率,然后通过最小化多个分类器或多个样本的熵来获得更准确的估计。这可以保证我们的估算器对变化的环境和较大的噪声水平具有鲁棒性。我们通过两个通用软件无线电外围平台通过仿真和真实实验数据演示了算法的性能。

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