Minimal trellis for systematic recursive convolutional encoders

C. Pimentel, R. Souza, B. Filho, Isaac Benchimol
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引用次数: 11

Abstract

We consider high-rate systematic recursive convolutional encoders to be adopted as constituent encoders in turbo schemes. It has been shown by Douillard and Berrou that the construction of high-rate turbo codes by means of high-rate constituent encoders offers several advantages over the typical construction based on the puncturing of rate-1/2 constituent encoders. To reduce the decoding complexity associated with high-rate codes, we adopt the “minimal” trellis representation of convolutional codes introduced by McEliece and Lin. While in the literature this trellis has been obtained for nonrecursive nonsystematic generator matrices, we herein introduce the construction of the “minimal” trellis for a systematic recursive convolutional encoding matrix. We also derive expressions for the arithmetic decoding complexity when the max-log-MAP algorithm is applied over the conventional and the “minimal” trellises. Examples are provided, which show that significant savings in decoding complexity are obtained, while keeping the same error performance of conventional schemes, when the minimal trellis is used. Finally, a code search is conducted and examples are provided which indicate that a refinement in terms of decoding complexity-error performance trade-off is obtained.
最小网格系统递归卷积编码器
我们考虑采用高速率系统递归卷积编码器作为turbo方案的组成编码器。Douillard和Berrou的研究表明,利用高速率组成编码器构建高速率turbo码,比基于速率-1/2组成编码器的典型结构具有许多优点。为了降低与高速率码相关的解码复杂性,我们采用了McEliece和Lin引入的卷积码的“最小”网格表示。虽然在文献中已经得到了非递归非系统生成矩阵的最小网格,但我们在这里介绍了系统递归卷积编码矩阵的“最小”网格的构造。我们还推导了在常规栅格和“最小”栅格上应用max-log-MAP算法时的算术解码复杂度表达式。实例表明,当使用最小网格时,在保持与传统方案相同的错误性能的同时,大大降低了译码复杂度。最后,进行了码搜索,并给出了实例,表明在解码复杂度和错误性能权衡方面得到了改进。
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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