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Deep Learning Based Fingerprints Reduction Approach for Visible Light-Based Indoor Positioning System

机译:基于深度学习的可见光室内定位系统的指纹方法

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Received signal strength and fingerprints based indoor positioning algorithm has been commonly used in recent studies. The actual implementation of this method is, however, quite time-consuming and may not be possible in large spaces, mainly because a large number of fingerprints should be collected to maintain high positioning accuracy. In this work, we first propose the deep learning-based fingerprints reduction approach to reduce the data collection workload in the offline mode while ensuring low positioning error. After estimating the extra fingerprints using a deep learning model, these new fingerprints combine with the initially collected fingerprints to create the whole training dataset for the real estimation process. In the online mode, the final estimated location is determined using the combination of trilateration and k-nearest neighbors. The experiment results showed that mean positioning errors of 1.21 cm, 6.86 cm, and 7.51 cm are achieved in the center area, the edge area, and the corner area, respectively.
机译:在最近的研究中,接收的信号强度和基于指纹的室内定位算法已经常用。然而,这种方法的实际实现是相当耗时的,并且在大空间中可能不可能,主要是因为应该收集大量指纹以保持高定位精度。在这项工作中,我们首先提出基于深度学习的指纹减少方法,以减少离线模式的数据收集工作量,同时确保低定位误差。在使用深度学习模型估算额外指纹之后,这些新的指纹与最初收集的指纹相结合,以创建用于实际估计过程的整个训练数据集。在在线模式中,使用三边形和k最近邻居的组合来确定最终估计位置。实验结果表明,在中心区域,边缘区域和角部区域分别实现了1.21厘米,6.86厘米和7.51厘米的平均定位误差。

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