利用残差学习实现稳健的端到端图像传输

Cenk M. Yetis
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摘要

最近,基于深度学习(DL)的物理层(PL)图像传输已成为一种新兴趋势,因为它能够大大优于传统的基于分离的数字传输。然而,在物理层实施解决方案需要对既定标准(如蜂窝通信标准)进行重大调整。应用层(AL)解决方案提供了更可行且符合标准的替代方案。在这项工作中,我们在 AL 层提出了分层图像传输方案,该方案对端到端(E2E)信道错误具有鲁棒性。基础层传输粗糙图像,增强层传输原始图像和粗糙图像之间的残差。通过将残留图像映射到与端到端信道结构一致的潜表示中,我们提出的解决方案对端到端信道错误具有很高的鲁棒性。
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Robust End-to-End Image Transmission with Residual Learning
Recently, deep learning (DL) based image transmission at the physical layer (PL) has become a rising trend due to its ability to significantly outperform conventional separation-based digital transmissions. However, implementing solutions at the PL requires a major shift in established standards, such as those in cellular communications. Application layer (AL) solutions present a more feasible and standards-compliant alternative. In this work, we propose a layered image transmission scheme at the AL that is robust to end-to-end (E2E) channel errors. The base layer transmits a coarse image, while the enhancement layer transmits the residual between the original and coarse images. By mapping the residual image into a latent representation that aligns with the structure of the E2E channel, our proposed solution demonstrates high robustness to E2E channel errors.
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