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On the Usage of Machine Learning Techniques to Improve Position Accuracy in Visible Light Positioning Systems

机译:关于机器学习技术的使用,提高可见光定位系统中的位置精度

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This paper investigates the usage of machine learning algorithms, applied to the task of position estimation in visible light positioning systems. Traditional approaches relying in trilateration usually resort to the application of the least squares method to find the position estimate. The least squares method is very prone to outlier information present in the data set, which reduces the estimation accuracy. This paper presents a strategy based on clustering and outlier removal able to improve the estimation accuracy. Clustering is based on DBSCAN, an algorithm used to find structure in unstructured data. The tuning parameters for DBSCAN are optimized following a linear regression supervised learning step, where a set of training examples with known real position is used. Simulation results show a 35% gain improvement in accuracy achieved with a moderate complexity increase. The minimum estimation error for the case scenario under study was 0.2 mm, with an r.m.s. error of 35 mm.
机译:本文研究了机器学习算法的使用,应用于可见光定位系统中位置估计的任务。传统方法依赖于三边级通常采用最小二乘法的应用找到位置估计。最小二乘法非常容易发生在数据集中存在的异常信息,这降低了估计精度。本文介绍了一种基于聚类和远离拆卸的策略,能够提高估计准确性。群集基于DBSCAN,一种用于在非结构化数据中找到结构的算法。在线性回归监督学习步骤之后优化DBSCAN的调谐参数,其中使用具有已知实位置的一组训练示例。仿真结果显示,通过中等复杂性增加的准确度提高了35 %的提高。研究下的案例场景的最低估计误差为0.2毫米,其中r.6。误差为35毫米。

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