Semi-Supervised Multi-Task Deep Learning for WiFi Fingerprint Database Construction in Building-Scale Localization

IF 4.3 2区 计算机科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Chun Wang;Juan Luo;Luxiu Yin;Chuang Li;Wenbin Huang;Wei Liang;Kuan-Ching Li
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Abstract

WiFi-based indoor positioning has emerged as a crucial technology for enabling smart consumer electronic applications, particularly in large-scale buildings. The construction of WiFi fingerprint databases using received signal strength (RSS) is foundational due to its widespread deployment. However, achieving high positioning accuracy typically requires labor-intensive and time-consuming site surveys. While recent crowdsourcing methods have facilitated the collection of numerous RSS samples, these samples frequently lack labels and reliability in multi-scale building environments. In this paper, we design a novel semi-supervised and multi-task mean-teacher model (MTMT-DNN) to annotate crowdsourcing unlabeled multi-scale fingerprint samples. This method enables the construction of a comprehensive fingerprint database without requiring intensive manual effort or compromising positioning accuracy. Our key idea is to first develop a multi-task Deep Neural Network (MT-DNN) for simultaneously annotating building, floor, and intra-floor coordinate labels by leveraging their complementary information. Then we employ the mean-teacher semi-supervised learning to leverage additional unlabeled fingerprint data for further improving the annotating performance and reducing intensive manual effort. Finally, we train the MTMT-DNN model by developing two multi-task loss functions and ensuring consistency between them, thereby enhancing the reliability of the annotated crowdsourced fingerprints. We conducted real-world experiments in a 20, $000~m^{2}$ site encompassing three multi-story buildings. The results demonstrate that our proposed method significantly reduces the workload of manually collecting labeled fingerprint samples. With only 20% of labeled fingerprints collected, we achieve 99% average annotation accuracy for building and floor labels and an average coordinates annotation error within $4~m$ .
基于半监督多任务深度学习的建筑尺度定位WiFi指纹库构建
基于wifi的室内定位已经成为实现智能消费电子应用的关键技术,特别是在大型建筑中。利用接收信号强度(RSS)构建WiFi指纹数据库是其广泛应用的基础。然而,实现高定位精度通常需要劳动密集型和耗时的现场调查。虽然最近的众包方法促进了大量RSS样本的收集,但这些样本在多尺度建筑环境中往往缺乏标签和可靠性。本文设计了一种新的半监督多任务均值-教师模型(MTMT-DNN)来标注众包无标记多尺度指纹样本。该方法可以构建一个全面的指纹数据库,而不需要大量的人工工作或影响定位精度。我们的关键思想是首先开发一个多任务深度神经网络(MT-DNN),通过利用它们的互补信息来同时注释建筑、楼层和楼层内的坐标标签。然后,我们采用均值教师半监督学习来利用额外的未标记指纹数据,进一步提高标注性能并减少密集的人工工作量。最后,我们通过开发两个多任务损失函数并保证它们之间的一致性来训练MTMT-DNN模型,从而提高标注的众包指纹的可靠性。我们在一个包含三个多层建筑的20 000~m^{2}$的场地上进行了真实的实验。结果表明,本文提出的方法显著减少了人工采集标记指纹样本的工作量。在仅采集20%的标记指纹的情况下,我们对建筑和地板标签的平均标注准确率达到99%,平均坐标标注误差在4~m之间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
7.70
自引率
9.30%
发文量
59
审稿时长
3.3 months
期刊介绍: The main focus for the IEEE Transactions on Consumer Electronics is the engineering and research aspects of the theory, design, construction, manufacture or end use of mass market electronics, systems, software and services for consumers.
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