Neural Networks for Indoor Localization based on Electric Field Sensing

Florian Kirchbuchner, Moritz Andres, Julian von Wilmsdorff, Arjan Kuijper
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Abstract

: In this paper, we will demonstrate a novel approach using artificial neural networks to enhance signal processing for indoor localization based on electric field measurement systems Up to this point, there exist a variety of approaches to localize persons by using wearables, optical sensors, acoustic methods and by using Smart Floors. All capacitive approaches use, to the best of our knowledge, analytic signal processing techniques to calculate the position of a user. While analytic methods can be more transparent in their functionality, they often come with a variety of drawbacks such as delay times, the inability to compensate defect sensor inputs or missing accuracy. We will demonstrate machine learning approaches especially made for capacitive systems resolving these challenges. To train these models, we propose a data labeling system for person localization and the resulting dataset for the supervised machine learning approaches. Our findings show that the novel approach based on artificial neural networks with a time convolutional neural network (TCNN) architecture reduces the Euclidean error by 40% (34.8cm Euclidean error) in respect to the presented analytical approach (57.3cm Euclidean error). This means a more precise determination of the user position of 22.5cm centimeter on average.
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基于电场传感的室内定位神经网络
在本文中,我们将展示一种使用人工神经网络来增强基于电场测量系统的室内定位信号处理的新方法。到目前为止,有多种方法可以通过使用可穿戴设备,光学传感器,声学方法和使用智能地板来定位人员。据我们所知,所有电容式方法都使用分析信号处理技术来计算用户的位置。虽然分析方法在功能上可以更加透明,但它们通常具有各种缺点,例如延迟时间,无法补偿传感器输入的缺陷或准确性缺失。我们将展示专门为解决这些挑战的电容系统设计的机器学习方法。为了训练这些模型,我们提出了一个用于人员定位的数据标记系统和用于监督机器学习方法的结果数据集。我们的研究结果表明,基于时间卷积神经网络(TCNN)架构的人工神经网络的新方法比现有的分析方法(57.3cm欧几里得误差)减少了40% (34.8cm欧几里得误差)。这意味着可以更精确地确定用户的位置,平均为22.5厘米。
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