CRNov 5, 2021

Deep Joint Source-Channel Coding for Image Transmission with Visual Protection

arXiv:2111.03234v335 citations
Originality Incremental advance
AI Analysis

This addresses the challenge of integrating security with efficient image transmission for practical applications, representing an incremental improvement over prior deep joint source-channel coding approaches.

The paper tackles the problem of secure image transmission by proposing a deep learning-based joint protection and source-channel coding method that protects visual content without significantly sacrificing reconstruction quality, achieving much better performance compared to existing methods.

Joint source-channel coding (JSCC) has achieved great success due to the introduction of deep learning (DL). Compared to traditional separate source-channel coding (SSCC) schemes, the advantages of DL-based JSCC (DJSCC) include high spectrum efficiency, high reconstruction quality, and relief of "cliff effect". However, it is difficult to couple existing secure communication mechanisms (e.g., encryption-decryption mechanism) with DJSCC in contrast with traditional SSCC schemes, which hinders the practical usage of this emerging technology. To this end, our paper proposes a novel method called DL-based joint protection and source-channel coding (DJPSCC) for images that can successfully protect the visual content of the plain image without significantly sacrificing image reconstruction performance. The idea of the design is to use a neural network to conduct visual protection, which converts the plain image to a visually protected one with the consideration of its interaction with DJSCC. During the training stage, the proposed DJPSCC method learns: 1) deep neural networks for image protection and image deprotection, and 2) an effective DJSCC network for image transmission in the protected domain. Compared to existing source protection methods applied with DJSCC transmission, the DJPSCC method achieves much better reconstruction performance.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes