Bandwidth-Agile Image Transmission with Deep Joint Source-Channel Coding
David Burth Kurka, Deniz G\"und\"uz

TL;DR
This paper introduces DeepJSCC-l, a deep learning-based joint source-channel coding scheme for adaptive, progressive image transmission over wireless channels, capable of handling successive refinement and multiple descriptions with graceful degradation.
Contribution
It presents the first practical multiple-description JSCC scheme using deep autoencoders, enabling adaptive bandwidth image transmission with minimal performance loss.
Findings
DeepJSCC-l achieves progressive transmission with negligible performance loss.
It performs comparably to digital schemes in low SNR and bandwidth-limited regimes.
The method offers graceful degradation with channel SNR.
Abstract
We propose deep learning based communication methods for adaptive-bandwidth transmission of images over wireless channels. We consider the scenario in which images are transmitted progressively in layers over time or frequency, and such layers can be aggregated by receivers in order to increase the quality of their reconstructions. We investigate two scenarios, one in which the layers are sent sequentially, and incrementally contribute to the refinement of a reconstruction, and another in which the layers are independent and can be retrieved in any order. Those scenarios correspond to the well known problems of \textit{successive refinement} and \textit{multiple descriptions}, respectively, in the context of joint source-channel coding (JSCC). We propose DeepJSCC-, an innovative solution that uses convolutional autoencoders, and present three architectures with different complexity…
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