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Main Authors: Kondrateva, Olga, Dietzel, Stefan, Scheuermann, Björn
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2407.18146
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author Kondrateva, Olga
Dietzel, Stefan
Scheuermann, Björn
author_facet Kondrateva, Olga
Dietzel, Stefan
Scheuermann, Björn
contents Earth observation with small satellites serves a wide range of relevant applications. However, significant advances in sensor technology (e.g., higher resolution, multiple spectrums beyond visible light) in combination with challenging channel characteristics lead to a communication bottleneck when transmitting the collected data to Earth. Recently, joint source coding, channel coding, and modulation based on neuronal networks has been proposed to combine image compression and communication. Though this approach achieves promising results when applied to standard terrestrial channel models, it remains an open question whether it is suitable for the more complicated and quickly varying satellite communication channel. In this paper, we consider a detailed satellite channel model accounting for different shadowing conditions and train an encoder-decoder architecture with realistic Sentinel-2 satellite imagery. In addition, to reduce the overhead associated with applying multiple neural networks for various channel states, we leverage attention modules and train a single adaptable neural network that covers a wide range of different channel conditions. Our evaluation results show that the proposed approach achieves similar performance when compared to less space-efficient schemes that utilize separate neuronal networks for differing channel conditions.
format Preprint
id arxiv_https___arxiv_org_abs_2407_18146
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Adaptable Deep Joint Source-and-Channel Coding for Small Satellite Applications
Kondrateva, Olga
Dietzel, Stefan
Scheuermann, Björn
Networking and Internet Architecture
Earth observation with small satellites serves a wide range of relevant applications. However, significant advances in sensor technology (e.g., higher resolution, multiple spectrums beyond visible light) in combination with challenging channel characteristics lead to a communication bottleneck when transmitting the collected data to Earth. Recently, joint source coding, channel coding, and modulation based on neuronal networks has been proposed to combine image compression and communication. Though this approach achieves promising results when applied to standard terrestrial channel models, it remains an open question whether it is suitable for the more complicated and quickly varying satellite communication channel. In this paper, we consider a detailed satellite channel model accounting for different shadowing conditions and train an encoder-decoder architecture with realistic Sentinel-2 satellite imagery. In addition, to reduce the overhead associated with applying multiple neural networks for various channel states, we leverage attention modules and train a single adaptable neural network that covers a wide range of different channel conditions. Our evaluation results show that the proposed approach achieves similar performance when compared to less space-efficient schemes that utilize separate neuronal networks for differing channel conditions.
title Adaptable Deep Joint Source-and-Channel Coding for Small Satellite Applications
topic Networking and Internet Architecture
url https://arxiv.org/abs/2407.18146