Federated Learning based Hierarchical 3D Indoor Localization
- URL: http://arxiv.org/abs/2303.00450v1
- Date: Wed, 1 Mar 2023 12:21:00 GMT
- Title: Federated Learning based Hierarchical 3D Indoor Localization
- Authors: Yaya Etiabi, Wafa Njima and El Mehdi Amhoud
- Abstract summary: We present a federated learning (FL) framework for hierarchical 3D indoor localization using a deep neural network.
We show that by adopting a hierarchical learning scheme, we can improve the localization accuracy by up to 24.06%.
We also obtain a building and floor prediction accuracy of 99.90% and 94.87% respectively.
- Score: 1.5469452301122177
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The proliferation of connected devices in indoor environments opens the floor
to a myriad of indoor applications with positioning services as key enablers.
However, as privacy issues and resource constraints arise, it becomes more
challenging to design accurate positioning systems as required by most
applications. To overcome the latter challenges, we present in this paper, a
federated learning (FL) framework for hierarchical 3D indoor localization using
a deep neural network. Indeed, we firstly shed light on the prominence of
exploiting the hierarchy between floors and buildings in a multi-building and
multi-floor indoor environment. Then, we propose an FL framework to train the
designed hierarchical model. The performance evaluation shows that by adopting
a hierarchical learning scheme, we can improve the localization accuracy by up
to 24.06% compared to the non-hierarchical approach. We also obtain a building
and floor prediction accuracy of 99.90% and 94.87% respectively. With the
proposed FL framework, we can achieve a near-performance characteristic as of
the central training with an increase of only 7.69% in the localization error.
Moreover, the conducted scalability study reveals that the FL system accuracy
is improved when more devices join the training.
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