论文标题
使用带有注意模块的深度源通道编码的无线图像传输
Wireless Image Transmission Using Deep Source Channel Coding With Attention Modules
论文作者
论文摘要
由于使用深度学习(DL),有关无线通信的联合源渠道编码(JSCC)的最新研究取得了巨大的成功。但是,基于DL的JSCC上的现有工作通常会训练设计的网络以在特定的信噪比(SNR)制度下运行,而无需考虑到部署阶段的SNR水平可能与培训阶段的SNR水平有所不同。需要许多网络来涵盖各种SNR,这是计算效率低下(在培训阶段),并且需要大量存储。为了克服这些缺点,我们的论文提出了一种新的方法,称为“注意DL基于DL”的JSCC(ADJSCC),该方法可以在传输过程中成功使用不同的SNR水平。该设计的灵感来自传统JSCC中的资源分配策略,该策略会根据频道SNR动态调整源编码和通道编码速率的压缩比。这是通过诉诸注意机制来实现的,因为这些能力能够将计算资源分配给更关键的任务。 AjSCC没有在传统的JSCC中应用资源分配策略,而是根据SNR条件对缩放功能进行频道软关注。我们通过广泛的实验将AJSCC方法与最新DL DL方法进行比较,以证明其适应性,鲁棒性和多功能性。与现有方法相比,所提出的方法的存储空间较少,并且在存在通道不匹配的情况下更健壮。
Recent research on joint source channel coding (JSCC) for wireless communications has achieved great success owing to the employment of deep learning (DL). However, the existing work on DL based JSCC usually trains the designed network to operate under a specific signal-to-noise ratio (SNR) regime, without taking into account that the SNR level during the deployment stage may differ from that during the training stage. A number of networks are required to cover the scenario with a broad range of SNRs, which is computational inefficiency (in the training stage) and requires large storage. To overcome these drawbacks our paper proposes a novel method called Attention DL based JSCC (ADJSCC) that can successfully operate with different SNR levels during transmission. This design is inspired by the resource assignment strategy in traditional JSCC, which dynamically adjusts the compression ratio in source coding and the channel coding rate according to the channel SNR. This is achieved by resorting to attention mechanisms because these are able to allocate computing resources to more critical tasks. Instead of applying the resource allocation strategy in traditional JSCC, the ADJSCC uses the channel-wise soft attention to scaling features according to SNR conditions. We compare the ADJSCC method with the state-of-the-art DL based JSCC method through extensive experiments to demonstrate its adaptability, robustness and versatility. Compared with the existing methods, the proposed method takes less storage and is more robust in the presence of channel mismatch.