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Parallel Decoding for Non-recursive Convolutional Codes and Its Enhancement Through Artificial Neural Networks

机译:非递归卷积码的并行解码及其通过人工神经网络的增强

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This paper presents a parallel computing approach that is employed to reconstruct original information bits from a non-recursive convolutional codeword in noise, with the goal of reducing the decoding latency without compromising the performance. This goal is achieved by means of cutting a received codeword into a number of sub-codewords (SCWs) and feeding them into a two-stage decoder. At the first stage, SCWs are decoded in parallel using the Viterbi algorithm or equivalently the brute force algorithm. Major challenge arises when determining the initial state of the trellis diagram for each SCW, which is uncertain except for the first one; and such results in multiple decoding outcomes for every SCW. To eliminate or more precisely exploit the uncertainty, an Euclidean-distance minimization algorithm is employed to merge neighboring SCWs; and this is called the merging stage, which can also run in parallel. Our work reveals that the proposed two-stage decoder is optimal and has its latency growing logarithmically, instead of linearly as for the Viterbi algorithm, with respect to the codeword length. Moreover, it is shown that the decoding latency can be further reduced by employing artificial neural networks for the SCW decoding. Computer simulations are conducted for two typical convolutional codes, and the results confirm our theoretical analysis.
机译:本文提出了一种并行计算方法,该方法可用于从噪声中的非递归卷积码字重构原始信息位,目的是减少解码延迟而不影响性能。通过将接收到的码字切成多个子码字(SCW)并将它们馈送到两级解码器中,可以实现此目标。在第一阶段,使用维特比算法或等效的蛮力算法对SCW进行并行解码。在确定每个SCW的网格图的初始状态时会遇到很大的挑战,除了第一个网格之外,不确定。这样就为每个SCW带来了多个解码结果。为了消除或更精确地利用不确定性,采用了欧氏距离最小化算法来合并相邻的SCW。这称为合并阶段,也可以并行运行。我们的工作表明,相对于码字长度,建议的两级解码器是最佳的,并且其等待时间呈对数增长,而不是像Viterbi算法那样呈线性增长。而且,示出了通过将人工神经网络用于SCW解码,可以进一步减少解码等待时间。对两个典型的卷积码进行了计算机仿真,结果证实了我们的理论分析。

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