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Successive Refinement of Images with Deep Joint Source-Channel Coding

机译:使用深度联合源通道编码对图像进行连续细化

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We introduce deep learning based communication methods for successive refinement of images over wireless channels. We present three different strategies for progressive image transmission with deep JSCC, with different complexity-performance tradeoffs, all based on convolutional autoencoders. Numerical results show that deep JSCC not only provides graceful degradation with channel signal-to-noise ratio (SNR) and improved performance in low SNR and low bandwidth regimes compared to state-of-the-art digital communication techniques, but can also successfully learn a layered representation, achieving performance close to a single-layer scheme. These results suggest that natural images encoded with deep JSCC over Gaussian channels are almost successively refinable.
机译:我们介绍了基于深度学习的通信方法,用于通过无线通道对图像进行连续细化。我们提出了三种基于深度JSCC的渐进式图像传输的不同策略,这些策略具有不同的复杂度-性能折衷,所有这些策略均基于卷积自动编码器。数值结果表明,与最新的数字通信技术相比,深层JSCC不仅可以顺畅地降低信道信噪比(SNR),并在低SNR和低带宽情况下提高性能,而且还可以成功学习分层表示,实现接近单层方案的性能。这些结果表明,在高斯通道上用深JSCC编码的自然图像几乎可以连续提炼。

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