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Algebraic decoder of multidimensional convolutional code: constructive algorithms for determining syndrome decoder and decoder matrix based on Grobner basis

机译:多维卷积码的代数解码器:基于Grobner基确定校正子解码器和解码器矩阵的构造算法

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摘要

A representation of an multidimensional (m-D) convolutional encoder is analogous to the representation of a transfer function for a MIMO m-D FIR system. The encoder matrix is usually not square and thus finding its inverse (decoder matrix) typically employs the Moore-Penrose generalized inverse. However, the result may not be FIR (polynomial matrix) even if the generator matrix is a polynomial matrix. In this paper a constructive algorithm for computing the FIR pseudo inverse, based on the usage of Grobner basis is presented along with detailed examples. The result obtained can be parameterized to cover the class of all possible FIR inverses. In addition, by using the computation method of syzygy with the Grobner basis module, the syndrome matrix for a given m-D convolutional encoder is shown. Furthermore, the theory of Grobner basis is applied to solve the algebraic syndrome decoder problems using the maximum likelihood (nearest neighborhood) criteria and the procedure for 2-D convolutional code error correction is proposed. Despite the complication of the decoding process, the proposed method is the only error correcting decoder for multidimensional convolutional code available to date.
机译:多维(m-D)卷积编码器的表示类似于MIMO m-D FIR系统的传递函数的表示。编码器矩阵通常不是方形的,因此找到其逆(解码器矩阵)通常采用Moore-Penrose广义逆。但是,即使生成器矩阵是多项式矩阵,结果也可能不是FIR(多项式矩阵)。本文提出了一种基于Grobner基的FIR伪逆的构造算法,并给出了详细的示例。可以对获得的结果进行参数化,以涵盖所有可能的FIR逆的类别。另外,通过使用带有Grobner基本模块的syzygy计算方法,显示了给定m-D卷积编码器的校正子矩阵。此外,将格罗布纳(Grobner)基理论用于使用最大似然(最近邻域)准则解决代数综合症解码器问题,并提出了二维卷积码纠错程序。尽管解码过程很复杂,但所提出的方法是迄今为止针对多维卷积码的唯一纠错解码器。

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