Semantically Optimized End-to-End Learning for Positional Telemetry in Vehicular Scenarios
End-to-end learning for wireless communications has recently attracted much interest in the community, owing to the emergence of deep learning-based architectures for the physical layer. Neural network-based autoencoders have been proposed as potential replacements of traditional model-based transmi...
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Zusammenfassung: | End-to-end learning for wireless communications has recently attracted much
interest in the community, owing to the emergence of deep learning-based
architectures for the physical layer. Neural network-based autoencoders have
been proposed as potential replacements of traditional model-based transmitter
and receiver structures. Such a replacement primarily provides an unprecedented
level of flexibility, allowing to tune such emerging physical layer network
stacks in many different directions. The semantic relevance of the transmitted
messages is one of those directions. In this paper, we leverage a specific
semantic relationship between the occurrence of a message (the source), and the
channel statistics. Such a scenario could be illustrated for instance, in
vehicular communications where the distance is to be conveyed between a leader
and a follower. We study two autoencoder approaches where these special
circumstances are exploited. We then evaluate our autoencoders, showing through
the simulations that the semantic optimization can achieve significant
improvements in the BLERs (up till 93.6%) and RMSEs (up till 87.3%) for
vehicular communications leading to considerably reduced risks and needs for
message re-transmissions. |
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DOI: | 10.48550/arxiv.2305.03877 |