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Semi-supervised learning for mobile robot localization using wireless signal strengths

机译:使用无线信号强度的移动机器人定位的半监督学习

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This paper proposes a new semi-supervised machine learning for localization. It improves localization efficiency by reducing efforts needed to calibrate labeled training data by using unlabeled data, where training data come from received signal strengths of a wireless communication link. The main idea is to treat training data as spatio-temporal data. We compare the proposed algorithm with the state-of-art semi-supervised learning methods. The algorithms are evaluated for estimating the unknown location of a smartphone mobile robot. The experimental results show that the developed learning algorithm is the most accurate and robust to the varying amount of training data, without sacrificing the computation speed.
机译:本文提出了一种新的半监督机器学习进行本地化。它通过减少使用未标记的数据校准标记的训练数据所需的工作量来提高定位效率,其中训练数据来自无线通信链路的接收信号强度。主要思想是将训练数据视为时空数据。我们将提出的算法与最新的半监督学习方法进行了比较。对算法进行评估,以估计智能手机移动机器人的未知位置。实验结果表明,在不牺牲计算速度的前提下,所开发的学习算法对于变化的训练数据量最为准确,鲁棒。

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