基于网络编码的DCT-MDC单丢失描述恢复

A. Farzamnia, S. Yusof, S. Nathaniel, R. A. Lee
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引用次数: 1

摘要

多描述编码(Multiple Description Coding, MDC)是一种提供量化、独立和同分布(iid)数据流的源编码方法,而网络编码(Network Coding, NC)是一种恢复网络中发生的丢失的方法。数控是对网络中间节点的独立数据序列进行代数数学运算。本文试图通过DCT-MDC和网络编码的结合,将图像描述系数的较高值传输到信道中,恢复网络中发生的损失。首先对输入图像进行零填充,然后对子图像执行DCT-MDC。接下来,使用下采样块创建4个多个描述。这4种描述通过网络传输,一旦主链路发生断开,利用p-cycle NC重建丢失的数据。这种方法不需要重传(反馈)。结果表明,该方法的PSNR和主观评价因子比以往的方法更高、更清晰,具有更高的吞吐量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recovering single lost description using DCT-MDC based on Network coding
Multiple Description Coding (MDC) is one of the source coding methods for providing several quantized, independent and identically distributed (iid) streams of data while Network coding (NC) is a method to recover the loss which occurs in the network. NC applies algebraic mathematic operation on independent data sequences in the intermediate nodes within a network. This paper attempts to transmit the higher value coefficients of image description to the channel and recover any loss happens in the network by joining the DCT-MDC and network coding. First, input image is zero padded and then DCT-MDC is performed on subimages. Next, downsampling block is used to create 4 multiple descriptions. These 4 descriptions are transmitted over the network and once the disconnection happens in the primary links, by using p-cycle NC lost data is reconstructed. In this method there is no need of retransmission (feedback). Results show that the PSNR and subjective evaluation factors for the proposed method are higher and clearer than the previous work which leads to have higher throughput.
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