CSI Clustering with Variational Autoencoding
- URL: http://arxiv.org/abs/2111.09758v1
- Date: Thu, 18 Nov 2021 15:38:54 GMT
- Title: CSI Clustering with Variational Autoencoding
- Authors: Michael Baur, Michael W\"urth, Vlad-Costin Andrei, Michael Koller,
Wolfgang Utschick
- Abstract summary: We propose to use a variational autoencoder to group unlabeled channel state information with respect to the model order in an unsupervised manner.
Our results suggest that, in order to learn an appropriate clustering, it is crucial to use a more flexible likelihood model for the variational autoencoder decoder.
- Score: 11.79281329070709
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The model order of a wireless channel plays an important role for a variety
of applications in communications engineering, e.g., it represents the number
of resolvable incident wavefronts with non-negligible power incident from a
transmitter to a receiver. Areas such as direction of arrival estimation
leverage the model order to analyze the multipath components of channel state
information. In this work, we propose to use a variational autoencoder to group
unlabeled channel state information with respect to the model order in the
variational autoencoder latent space in an unsupervised manner. We validate our
approach with simulated 3GPP channel data. Our results suggest that, in order
to learn an appropriate clustering, it is crucial to use a more flexible
likelihood model for the variational autoencoder decoder than it is usually the
case in standard applications.
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