Performance Analysis of Linear Codes under Maximum-Likelihood Decoding: A Tutorial

IF 2 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Foundations and Trends in Communications and Information Theory Pub Date : 2006-06-20 DOI:10.1561/0100000009
I. Sason, S. Shamai
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引用次数: 161

Abstract

This article is focused on the performance evaluation of linear codes under optimal maximum-likelihood (ML) decoding. Though the ML decoding algorithm is prohibitively complex for most practical codes, their performance analysis under ML decoding allows to predict their performance without resorting to computer simulations. It also provides a benchmark for testing the sub-optimality of iterative (or other practical) decoding algorithms. This analysis also establishes the goodness of linear codes (or ensembles), determined by the gap between their achievable rates under optimal ML decoding and information theoretical limits. In this article, upper and lower bounds on the error probability of linear codes under ML decoding are surveyed and applied to codes and ensembles of codes on graphs. For upper bounds, we discuss various bounds where focus is put on Gallager bounding techniques and their relation to a variety of other reported bounds. Within the class of lower bounds, we address de Caen's based bounds and their improvements, and also consider sphere-packing bounds with their recent improvements targeting codes of moderate block lengths.
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最大似然译码下线性码的性能分析:教程
本文主要研究线性码在最佳最大似然(ML)译码下的性能评价。尽管ML解码算法对于大多数实际代码来说过于复杂,但它们在ML解码下的性能分析允许在不借助计算机模拟的情况下预测它们的性能。它还为测试迭代(或其他实用)解码算法的次优性提供了一个基准。该分析还确定了线性代码(或集成)的优点,由其在最佳ML解码和信息理论极限下可实现的速率之间的差距决定。本文研究了ML译码下线性码的错误概率的上界和下界,并将其应用于图上码和码的集合。对于上界,我们讨论了各种边界,重点放在Gallager边界技术及其与各种其他报道边界的关系上。在下界类中,我们讨论了de Caen的基于边界及其改进,并且还考虑了球填充边界及其最近针对中等块长度代码的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Foundations and Trends in Communications and Information Theory
Foundations and Trends in Communications and Information Theory COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS-
CiteScore
7.90
自引率
0.00%
发文量
6
期刊介绍: Foundations and Trends® in Communications and Information Theory publishes survey and tutorial articles in the following topics: - Coded modulation - Coding theory and practice - Communication complexity - Communication system design - Cryptology and data security - Data compression - Data networks - Demodulation and Equalization - Denoising - Detection and estimation - Information theory and statistics - Information theory and computer science - Joint source/channel coding - Modulation and signal design - Multiuser detection - Multiuser information theory
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