DNN-based Localization from Channel Estimates: Feature Design and
Experimental Results
- URL: http://arxiv.org/abs/2004.00363v2
- Date: Mon, 25 May 2020 17:15:42 GMT
- Title: DNN-based Localization from Channel Estimates: Feature Design and
Experimental Results
- Authors: Paul Ferrand, Alexis Decurninge, Maxime Guillaud
- Abstract summary: We consider the use of deep neural networks (DNNs) in the context of channel state information (CSI)-based localization.
We introduce a principled approach to feature design for CSI-based DNN applications based on the objective of making the features invariant to the considered impairments.
We provide an experimental evaluation of several aspects of that learning approach, including localization accuracy, generalization capability, and data aging.
- Score: 11.448223173438233
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We consider the use of deep neural networks (DNNs) in the context of channel
state information (CSI)-based localization for Massive MIMO cellular systems.
We discuss the practical impairments that are likely to be present in practical
CSI estimates, and introduce a principled approach to feature design for
CSI-based DNN applications based on the objective of making the features
invariant to the considered impairments. We demonstrate the efficiency of this
approach by applying it to a dataset constituted of geo-tagged CSI measured in
an outdoors campus environment, and training a DNN to estimate the position of
the UE on the basis of the CSI. We provide an experimental evaluation of
several aspects of that learning approach, including localization accuracy,
generalization capability, and data aging.
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