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首页> 外文期刊>Soft computing: A fusion of foundations, methodologies and applications >FSELM: fusion semi-supervised extreme learning machine for indoor localization with Wi-Fi and Bluetooth fingerprints
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FSELM: fusion semi-supervised extreme learning machine for indoor localization with Wi-Fi and Bluetooth fingerprints

机译:FSELM:融合半监控的极端学习机,具有Wi-Fi和蓝牙指纹室内定位

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摘要

Recently, the problem of indoor localization based on WLAN signals is attracting increasing attention due to the development of mobile devices and the widespread construction of networks. However, no definitive solution for achieving a low-cost and accurate positioning system has been found. In most traditional approaches, solving the indoor localization problem requires the availability of a large number of labeled training samples, the collection of which requires considerable manual effort. Previous research has not provided a means of simultaneously reducing human calibration effort and improving location accuracy. This paper introduces fusion semi-supervised extreme learning machine (FSELM), a novel semi-supervised learning algorithm based on the fusion of information from Wi-Fi and Bluetooth Low Energy (BLE) signals. Unlike previous semi-supervised methods, which consider multiple signals individually, FSELM fuses multiple signals into a unified model. When applied to sparsely calibrated localization problems, our proposed method is advantageous in three respects. First, it can dramatically reduce the human calibration effort required when using a semi-supervised learning framework. Second, it utilizes fused Wi-Fi and BLE fingerprints to markedly improve the location accuracy. Third, it inherits the beneficial properties of ELMs with regard to training and testing speeds because the input weights and biases of hidden nodes can be generated randomly. As demonstrated by experimental results obtained on practical indoor localization datasets, FSELM possesses a better semi-supervised manifold learning ability and achieves higher location accuracy than several previous batch supervised learning approaches (ELM, BP and SVM) and semi-supervised learning approaches (SELM, S-RVFL and FS-RVFL). Moreover, FSELM needs less training and testing time, making it easier to apply in practice. We conclude through experiments that FSELM yields good results when applied to a mult
机译:最近,基于WLAN信号的室内定位问题由于移动设备的开发和网络广泛构建而引起的越来越受到关注。但是,没有找到用于实现低成本和准确定位系统的最终解决方案。在大多数传统方法中,解决室内定位问题需要大量标记的训练样本,其中需要相当大的手动努力。以前的研究没有提供同时减少人类校准工作并提高位置精度的方法。本文介绍了融合半监控的极端学习机(FSELM),一种新型半监督学习算法,基于来自Wi-Fi和蓝牙低能量(BLE)信号的信息融合。与以前的半监督方法不同,该方法单独考虑多个信号,FSLM将多个信号熔化为统一模型。当应用于稀疏校准的定位问题时,我们所提出的方法在三个方面是有利的。首先,它可以大大减少使用半监督学习框架时所需的人力校准工作。其次,它利用熔融的Wi-Fi和BLE指纹显着提高位置精度。第三,它继承了ELMS关于训练和测试速度的有益特性,因为可以随机生成隐藏节点的输入权重和偏差。正如在实际室内定位数据集上获得的实验结果所证明的,FSLM拥有更好的半监督歧管学习能力,并且比以前的批量监督学习方法(ELM,BP和SVM)和半监督学习方法(SELM)实现更高的位置准确性(SELM, S-RVFL和FS-RVFL)。此外,FSELM需要更少的培训和测试时间,从而更容易在实践中申请。我们通过实验结束,因为在施加到多个时,FSELM产生良好的结果

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