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Standard-Compliant Multiple Description Image Coding Based on Convolutional Neural Networks

机译:基于卷积神经网络的符合标准的多描述图像编码

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摘要

Multiple description (MD) coding is an attractive framework for robust information transmission over non-prioritized and unpredictable networks. In this paper, a novel MD image coding scheme is proposed based on convolutional neural networks (CNNs), which aims to improve the reconstructed quality of side and central decoders. For this purpose initially, a given image is encoded into two independent descriptions by sub-sampling. Such a design can make the proposed method compatible with the existing image coding standards. At the decoder, in order to achieve high-quality of side and central image reconstruction, three CNNs, including two side decoder sub-networks and one central decoder sub-network, are adopted into an end-to-end reconstruction framework. Experimental results show the improvement achieved by the proposed scheme in terms of both peak signal-to-noise ratio values and subjective quality. The proposed method demonstrates better rate central and side distortion performance.
机译:多描述(MD)编码是用于在非优先级和不可预测的网络上进行可靠信息传输的有吸引力的框架。本文提出了一种基于卷积神经网络(CNN)的MD图像编码方案,旨在提高侧解码器和中央解码器的重构质量。为此,最初,通过子采样将给定图像编码为两个独立的描述。这样的设计可以使所提出的方法与现有的图像编码标准兼容。在解码器处,为了实现高质量的侧面和中央图像重建,将三个CNN(包括两个侧面解码器子网和一个中央解码器子网)用作端到端重建框架。实验结果表明,该方案在峰值信噪比值和主观质量方面均取得了改善。所提出的方法展示了更好的速率中心和侧失真性能。

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