Multi-Environment based Meta-Learning with CSI Fingerprints for Radio
Based Positioning
- URL: http://arxiv.org/abs/2210.14510v1
- Date: Wed, 26 Oct 2022 06:43:42 GMT
- Title: Multi-Environment based Meta-Learning with CSI Fingerprints for Radio
Based Positioning
- Authors: Anastasios Foliadis, Mario H. Casta\~neda Garcia, Richard A.
Stirling-Gallacher, Reiner S. Thom\"a
- Abstract summary: We propose a DL model consisting of two parts: the first part aims to learn environment independent features.
The second part combines those features depending on the particular environment.
We show that for positioning in a new environment, initializing a DL model with the meta learned environment independent function achieves higher UE positioning accuracy.
- Score: 2.541166904313997
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Radio based positioning of a user equipment (UE) based on deep learning (DL)
methods using channel state information (CSI) fingerprints have shown promising
results. DL models are able to capture complex properties embedded in the CSI
about a particular environment and map UE's CSI to the UE's position. However,
the CSI fingerprints and the DL models trained on such fingerprints are highly
dependent on a particular propagation environment, which generally limits the
transfer of knowledge of the DL models from one environment to another. In this
paper, we propose a DL model consisting of two parts: the first part aims to
learn environment independent features while the second part combines those
features depending on the particular environment. To improve transfer learning,
we propose a meta learning scheme for training the first part over multiple
environments. We show that for positioning in a new environment, initializing a
DL model with the meta learned environment independent function achieves higher
UE positioning accuracy compared to regular transfer learning from one
environment to the new environment, or compared to training the DL model from
scratch with only fingerprints from the new environment. Our proposed scheme is
able to create an environment independent function which can embed knowledge
from multiple environments and more effectively learn from a new environment.
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