In recent years, the use of WiFi fingerprints for indoor positioning has grown in popularity, largely due to the widespread availability of WiFi and the proliferation of mobile communication devices. However, many existing methods for constructing fingerprint datasets rely on labor-intensive and time-consuming processes of collecting large amounts of data. Additionally, these methods often focus on ideal laboratory environments, rather than considering the practical challenges of large multi-floor buildings. To address these issues, we present a novel WiDAGCN model that can be trained using a small number of labeled site survey data and large amounts of unlabeled crowdsensed WiFi fingerprints. By constructing heterogeneous graphs based on received signal strength indicators (RSSIs) between waypoints and WiFi access points (APs), our model is able to effectively capture the topological structure of the data. We also incorporate graph convolutional networks (GCNs) to extract graph-level embeddings, a feature that has been largely overlooked in previous WiFi indoor localization studies. To deal with the challenges of large amounts of unlabeled data and multiple data domains, we employ a semi-supervised domain adversarial training scheme to effectively utilize unlabeled data and align the data distributions across domains. Our system is evaluated using a public indoor localization dataset that includes multiple buildings, and the results show that it performs competitively in terms of localization accuracy in large buildings.
翻译:近年来,使用 WiFi 指纹进行室内定位的使用越来越普遍,这在很大程度上是由于 WiFi 的普及和移动通信设备的普及所致。但是,许多现有的构建指纹数据集的方法依赖于收集大量数据的劳动密集型且耗时的过程。此外,这些方法通常关注于理想的实验室环境,而忽略了大型多层建筑的实际挑战。为了解决这些问题,我们提出了一种新颖的WiDAGCN模型,可以使用少量已标记的现场调查数据和大量未标记的众传 WiFi 指纹进行训练。通过基于路标点和 WiFi 接入点 (APs) 之间的接收信号强度指示器 (RSSIs) 构建异构图,我们的模型能够有效地捕捉数据的拓扑结构。我们还结合图卷积网络 (GCNs) 提取图级嵌入,这是先前的 WiFi 室内定位研究中被忽视的特征。为了应对大量未标记的数据和多个数据域的挑战,我们采用半监督的领域对抗训练方案,以有效利用未标记的数据并对齐跨领域的数据分布。我们使用包括多个建筑物的公共室内定位数据集进行评估,结果显示,在大型建筑物中,我们的系统在定位精度方面表现得很有竞争力。