平面图辅助室内定位:零点学习框架、数据集和原型

Haiyao Yu;Changyang She;Yunkai Hu;Geng Wang;Rui Wang;Branka Vucetic;Yonghui Li
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引用次数: 0

摘要

机器学习一直被认为是一种很有前途的室内定位方法。然而,在实际系统中实施基于学习的算法时,采样效率、可扩展性和泛化能力仍是有待解决的问题。在本文中,我们建立了一个无需在新通信环境中进行真实世界测量的零点学习框架。具体来说,我们使用了一种可扩展到接入点(AP)和移动设备(MD)数量的图神经网络来获取 MD 的粗略位置。在粗略位置的基础上,利用 MD 和接入点之间的平面图像来提高平面辅助深度神经网络的定位精度。为了进一步提高泛化能力,我们开发了一个合成数据生成器,它能在不同场景下提供合成数据样本,而真实世界的样本是不可用的。我们在一个估算 MD 位置的原型中实现了该框架。实验结果表明,与现有文献中的三种基线相比,我们的零点学习方法可将定位误差降低约 30% 至 55%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Floor-Plan-Aided Indoor Localization: Zero-Shot Learning Framework, Data Sets, and Prototype
Machine learning has been considered a promising approach for indoor localization. Nevertheless, the sample efficiency, scalability, and generalization ability remain open issues of implementing learning-based algorithms in practical systems. In this paper, we establish a zero-shot learning framework that does not need real-world measurements in a new communication environment. Specifically, a graph neural network that is scalable to the number of access points (APs) and mobile devices (MDs) is used for obtaining coarse locations of MDs. Based on the coarse locations, the floor-plan image between an MD and an AP is exploited to improve localization accuracy in a floor-plan-aided deep neural network. To further improve the generalization ability, we develop a synthetic data generator that provides synthetic data samples in different scenarios, where real-world samples are not available. We implement the framework in a prototype that estimates the locations of MDs. Experimental results show that our zero-shot learning method can reduce localization errors by around 30% to 55% compared with three baselines from the existing literature.
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