Semi-supervised Learning with Network Embedding on Ambient RF Signals for Geofencing Services
In applications such as elderly care, dementia anti-wandering and pandemic control, it is important to ensure that people are within a predefined area for their safety and well-being. We propose GEM, a practical, semi-supervised Geofencing system with network EMbedding, which is based only on ambien...
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Zusammenfassung: | In applications such as elderly care, dementia anti-wandering and pandemic
control, it is important to ensure that people are within a predefined area for
their safety and well-being. We propose GEM, a practical, semi-supervised
Geofencing system with network EMbedding, which is based only on ambient radio
frequency (RF) signals. GEM models measured RF signal records as a weighted
bipartite graph. With access points on one side and signal records on the
other, it is able to precisely capture the relationships between signal
records. GEM then learns node embeddings from the graph via a novel bipartite
network embedding algorithm called BiSAGE, based on a Bipartite graph neural
network with a novel bi-level SAmple and aggreGatE mechanism and non-uniform
neighborhood sampling. Using the learned embeddings, GEM finally builds a
one-class classification model via an enhanced histogram-based algorithm for
in-out detection, i.e., to detect whether the user is inside the area or not.
This model also keeps on improving with newly collected signal records. We
demonstrate through extensive experiments in diverse environments that GEM
shows state-of-the-art performance with up to 34% improvement in F-score.
BiSAGE in GEM leads to a 54% improvement in F-score, as compared to the one
without BiSAGE. |
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DOI: | 10.48550/arxiv.2210.07889 |