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Optimal Multidimensional Convolutional Codes

Z. Abreu, J. Lieb, R. Pinto, R. Simoes

Abstract

In this paper, we analyze $m$-dimensional ($m$D) convolutional codes with finite support, viewed as a natural generalization of one-dimensional (1D) convolutional codes to higher dimensions. An $m$D convolutional code with finite support consists of codewords with compact support indexed in $\mathbb{N}^m$ and taking values in $\mathbb{F}_{q}[z_1,\ldots,z_m]^n$, where $\mathbb{F}_{q}$ is a finite field with $q$ elements. We recall a natural upper bound on the free distance of an $m$D convolutional code with rate $k/n$ and degree~$δ$, called $m$D generalized Singleton bound. Codes that attain this bound are called maximum distance separable (MDS) $m$D convolutional codes. As our main result, we develop new constructions of MDS $m$D convolutional codes based on superregularity of certain matrices. Our results include the construction of new families of MDS $mD$ convolutional codes of rate $1/n$, relying on generator matrices with specific row degree conditions. These constructions significantly expand the set of known constructions of MDS $m$D convolutional codes.

Optimal Multidimensional Convolutional Codes

Abstract

In this paper, we analyze -dimensional (D) convolutional codes with finite support, viewed as a natural generalization of one-dimensional (1D) convolutional codes to higher dimensions. An D convolutional code with finite support consists of codewords with compact support indexed in and taking values in , where is a finite field with elements. We recall a natural upper bound on the free distance of an D convolutional code with rate and degree~, called D generalized Singleton bound. Codes that attain this bound are called maximum distance separable (MDS) D convolutional codes. As our main result, we develop new constructions of MDS D convolutional codes based on superregularity of certain matrices. Our results include the construction of new families of MDS convolutional codes of rate , relying on generator matrices with specific row degree conditions. These constructions significantly expand the set of known constructions of MDS D convolutional codes.

Paper Structure

This paper contains 4 sections, 9 theorems, 82 equations.

Key Result

Lemma 2.9

Let $m,\nu \in \mathbb N$ and Then $\# S = \frac{(\nu + m)!}{\nu ! m!}$.

Theorems & Definitions (22)

  • Definition 2.1: Weiner1998
  • Definition 2.2: Weiner1998
  • Definition 2.3
  • Definition 2.4: Weiner1998
  • Definition 2.5
  • Example 2.6
  • Definition 2.7
  • Example 2.8
  • Lemma 2.9: 10.5555/579402
  • Theorem 2.10
  • ...and 12 more