Domain Adversarial Graph Convolutional Network Based on RSSI and
Crowdsensing for Indoor Localization
- URL: http://arxiv.org/abs/2204.05184v3
- Date: Fri, 31 Mar 2023 13:10:05 GMT
- Title: Domain Adversarial Graph Convolutional Network Based on RSSI and
Crowdsensing for Indoor Localization
- Authors: Mingxin Zhang, Zipei Fan, Ryosuke Shibasaki and Xuan Song
- Abstract summary: 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.
Our system is evaluated using a public indoor localization dataset that includes multiple buildings.
- Score: 8.406788215294483
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: 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.
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