利用特征信息加速迭代译码的改进

T. Moon, J. S. Crockett, J. Gunther
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引用次数: 1

摘要

通过在解码算法中引入一定程度的非局部性,特征信息解码器已被证明可以减少LDPC和其他迭代解码代码所需的解码迭代次数。本文利用归一化矩阵对多环特征消息方法进行了扩展。通过EXIT图检查性能,显示特征消息算法在图中具有更宽的通道。性能作为图形周长的函数进行了检查,显示性能在很大程度上与周长不变。最后,研究了在比典型的“低密度”奇偶校验矩阵更密集的矩阵上的性能,表明特征消息方法比消息传递性能更好,但仍然会随着矩阵密度的增加而崩溃
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improvements on Accelerating Iterative Decoding Using Eigenmessages
The eigenmessage decoder has been shown to reduce the number of decoding iterations required for LDPC and other iteratively-decoded codes by introducing a degree of nonlocality into the decoding algorithm. In this paper, the multiple loop eigenmessage approach is extended using normalized matrices. Performance is examined via EXIT charts, showing that eigenmessage algorithms have wider channels in the chart. Performance as a function of the girth of the graph is examined, showing the performance to be largely invariant to girth. Finally, performance on matrices denser than typical "low density" parity check matrices is examined, showing that eigenmessage methods perform better than message passing, but still break down as the matrix density increases
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