Raes Willem, Knudde Nicolas, De Bruycker Jorik, Dhaene Tom, Stevens Nobby
ESAT-TELEMIC, KU Leuven, 9000 Ghent, Belgium.
IDLab-Imec, UGent, 9000 Ghent, Belgium.
Sensors (Basel). 2020 Oct 27;20(21):6109. doi: 10.3390/s20216109.
In this work, the use of Machine Learning methods for robust Received Signal Strength (RSS)-based Visible Light Positioning (VLP) is experimentally evaluated. The performance of Multilayer Perceptron (MLP) models and Gaussian processes (GP) is investigated when using relative RSS input features. The experimental set-up for the RSS-based VLP technology uses light-emitting diodes (LEDs) transmitting intensity modulated light and a single photodiode (PD) as a receiver. The experiments focus on achieving robustness to cope with unknown received signal strength modifications over time. Therefore, several datasets were collected, where per dataset either the LEDs transmitting power is modified or the PD aperture is partly obfuscated by dust particles. Two relative RSS schemes are investigated. The first scheme uses the maximum received light intensity to normalize the received RSS vector, while the second approach obtains RSS ratios by combining all possible unique pairs of received intensities. The Machine Learning (ML) methods are compared to a relative multilateration implementation. It is demonstrated that the adopted MLP and GP models exhibit superior performance and higher robustness when compared to the multilateration strategies. Furthermore, when comparing the investigated ML models, the GP model is proven to be more robust than the MLP for the considered scenarios.
在这项工作中,对使用机器学习方法进行基于稳健接收信号强度(RSS)的可见光定位(VLP)进行了实验评估。研究了使用相对RSS输入特征时多层感知器(MLP)模型和高斯过程(GP)的性能。基于RSS的VLP技术的实验装置使用发射强度调制光的发光二极管(LED)和作为接收器的单个光电二极管(PD)。实验重点在于实现鲁棒性,以应对随时间变化的未知接收信号强度变化。因此,收集了几个数据集,每个数据集要么改变LED的发射功率,要么用灰尘颗粒部分遮挡PD的孔径。研究了两种相对RSS方案。第一种方案使用最大接收光强度对接收的RSS向量进行归一化,而第二种方法通过组合所有可能的唯一接收强度对来获得RSS比率。将机器学习(ML)方法与相对多边定位实现进行了比较。结果表明,与多边定位策略相比,所采用的MLP和GP模型表现出卓越的性能和更高的鲁棒性。此外,在比较所研究的ML模型时,对于所考虑的场景,GP模型被证明比MLP更稳健。