Recent works have shown that joint source-channel coding (JSCC) schemes using deep neural networks (DNNs), called DeepJSCC, provide promising results in wireless image transmission. However, these methods mostly focus on the distortion of the reconstructed signals with respect to the input image, rather than their perception by humans. However, focusing on traditional distortion metrics alone does not necessarily result in high perceptual quality, especially in extreme physical conditions, such as very low bandwidth compression ratio (BCR) and low signal-to-noise ratio (SNR) regimes. In this work, we propose two novel JSCC schemes that leverage the perceptual quality of deep generative models (DGMs) for wireless image transmission, namely InverseJSCC and GenerativeJSCC. While the former is an inverse problem approach to DeepJSCC, the latter is an end-to-end optimized JSCC scheme. In both, we optimize a weighted sum of mean squared error (MSE) and learned perceptual image patch similarity (LPIPS) losses, which capture more semantic similarities than other distortion metrics. InverseJSCC performs denoising on the distorted reconstructions of a DeepJSCC model by solving an inverse optimization problem using style-based generative adversarial network (StyleGAN). Our simulation results show that InverseJSCC significantly improves the state-of-the-art (SotA) DeepJSCC in terms of perceptual quality in edge cases. In GenerativeJSCC, we carry out end-to-end training of an encoder and a StyleGAN-based decoder, and show that GenerativeJSCC significantly outperforms DeepJSCC both in terms of distortion and perceptual quality.
翻译:最近的一些著作表明,使用深神经网络(DeepJSCC)的联合源-通道编码(JSCC)计划(JSCC)计划(称为DeepJSCC)在无线图像传输方面提供了有希望的结果;然而,这些方法主要侧重于在输入图像方面对重建信号的扭曲,而不是对人类的感知;然而,仅仅关注传统的扭曲指标并不一定导致高感官质量,特别是在极端的物质条件下,如非常低的带宽压缩比率(BCR)和低信号对音频比率(SNR)制度。在这项工作中,我们提出了两种新型的JSC计划,利用深度的感知质量模型(DGMMM)模型(MSE)的质量模型(LPPS)质量模型(DGMS)质量模型(DGMSC)质量模型质量模型(DGC)的质量质量模型质量模型(SQC)质量模型(Orupal-C)损失,在深度的SQSQ-C 模型(SQ-C) 网络中,通过大幅的扭曲的模型(SQSQ-C) 显示一个结果,在深度的SQ-RC-C 测试中,在深度的系统-C 测试中,在深度的系统-C-C-C 测试中,显示一个显著的系统-SQ-SQ-SQ-SQ-SQ-SQ-SD-SD-SDMBSDMBMBMBMBMBMBB的模型中,显示一个显著的模拟的模型(SD-SDMBBBBBDM 的模型中显示一个显著的模拟的模拟的模拟的模型的模型的模型的模型的模型的模型的模型的模型(我们的模型-S-S-C-C-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-SD-C-SD-SD-SD-SD-S-SD-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-