准确性的回声:用神经网络方法增强能量中性设备的超声室内定位

Daan Delabie;Thomas Feys;Chesney Buyle;Bert Cox;Liesbet Van der Perre;Lieven De Strycker
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引用次数: 0

摘要

随着室内定位系统在工业、零售和医疗保健等各个领域的兴趣日益增加,寻找满足不同应用需求的最佳解决方案已经获得了显著的动力。这项工作强调了混合射频声学系统与先进的机器学习模型相结合的潜力,可以实现强大、可扩展和节能的室内定位。重点是增强能量中性设备的定位算法,以提高准确性、精度、可靠性和安装便利性。传统的基于模型(MB)的方法,依赖于视距(LoS)组件,经常在具有挑战性的非视距(NLoS)和混响环境中挣扎。为了解决这个问题,我们提出了能够利用多路径组件(mpc)作为附加信息的数据驱动神经网络(NN)方法。利用房间里的回声来提高准确性。各种神经网络架构,包括多层感知器、(圆形)卷积神经网络和图神经网络(gnn),首先使用合成数据进行评估。结果表明,特别是GNNs优于MB方法,在LoS和NLoS场景下都获得了更高的精度。在第二阶段,进行广泛的现实生活实验。在混响NLoS环境中,使用交叉验证、测量数据训练和迁移学习(TL)来评估GNN。交叉验证和TL验证了该方法的实际可行性。与MB技术相比,我们报告了超过80%的3d定位误差改善。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Echoes of Accuracy: Enhancing Ultrasonic Indoor Positioning for Energy-Neutral Devices With Neural Network Approaches
With increasing interest in indoor positioning systems across various domains, such as industry, retail, and healthcare, the search for optimal solutions to meet the needs of different applications has gained significant momentum. This work highlights the potential of hybrid RF-acoustic systems combined with advanced machine learning models for robust, scalable, and energy-efficient indoor localization. The focus is on enhancing positioning algorithms for energy-neutral devices to improve accuracy, precision, reliability, and ease of installation. Traditional model-based (MB) methods, relying on line-of-sight (LoS) components, often struggle in challenging nonline-of-sight (NLoS) and reverberant environments. To address this, we propose data-driven neural network (NN) approaches capable of harnessing multipath components (MPCs) as additional information. The echoes in the room are exploited to improve accuracy. Various NN architectures, including multilayer perceptrons, (circular) convolutional neural networks, and graph neural networks (GNNs) are evaluated, in first instance using synthetic data. Results demonstrate that especially GNNs outperform MB methods, achieving superior accuracy in both LoS and NLoS scenarios. During the second phase, extensive real-life experiments are carried out. The GNN is evaluated using cross-validation, training on measurement data, and transfer learning (TL) within a reverberant NLoS environment. The cross-validation and TL demonstrate the practical feasibility. We report over 80% of improvement in 3-D positioning error compared to the MB technique.
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