高斯向量的最优多重描述变换编码

Vivek K Goyal, J. Kovacevic
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引用次数: 122

摘要

多描述编码(MDC)是用于多个信道的源编码,使得接收信道的任意子集的解码器可以产生有用的重构。Orchard et al.(1997)提出了一种独立高斯随机变量对MDC的变换编码方法。本文提供了一个将多重描述变换编码(MDTC)扩展到任意数量变量的通用框架,并扩展了所考虑的变换集。对一般情况进行了分析,可用于优化MDTC系统的数值设计。通过两个通道发送两个变量的情况在最一般的设置中进行了分析优化,其中通道故障不需要具有相等的概率或独立。结果表明,当信道故障等概率且独立时,Orchard等人使用的变换是最优集合,但也可能有许多其他选择。提出了一种级联结构,为具有大量变量的系统的低复杂度设计、编码和解码提供了便利。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimal multiple description transform coding of Gaussian vectors
Multiple description coding (MDC) is source coding for multiple channels such that a decoder which receives an arbitrary subset of the channels may produce a useful reconstruction. Orchard et al. (1997) proposed a transform coding method for MDC of pairs of independent Gaussian random variables. This paper provides a general framework which extends multiple description transform coding (MDTC) to any number of variables and expands the set of transforms which are considered. Analysis of the general case is provided, which can be used to numerically design optimal MDTC systems. The case of two variables sent over two channels is analytically optimized in the most general setting where channel failures need not have equal probability or be independent. It is shown that when channel failures are equally probable and independent, the transforms used in Orchard et al. are in the optimal set, but many other choices are possible. A cascade structure is presented which facilitates low-complexity design, coding, and decoding for a system with a large number of variables.
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