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使用 Kronecker 基计算多维信号的稀疏表示。

Computing sparse representations of multidimensional signals using Kronecker bases.

机构信息

Instituto Argentino de Radioastronomía-IAR, CCT La Plata-CONICET, 1894 Villa Elisa C.C. No. 5, Argentina.

出版信息

Neural Comput. 2013 Jan;25(1):186-220. doi: 10.1162/NECO_a_00385. Epub 2012 Sep 28.

DOI:10.1162/NECO_a_00385
PMID:23020110
Abstract

Recently there has been great interest in sparse representations of signals under the assumption that signals (data sets) can be well approximated by a linear combination of few elements of a known basis (dictionary). Many algorithms have been developed to find such representations for one-dimensional signals (vectors), which requires finding the sparsest solution of an underdetermined linear system of algebraic equations. In this letter, we generalize the theory of sparse representations of vectors to multiway arrays (tensors)--signals with a multidimensional structure--by using the Tucker model. Thus, the problem is reduced to solving a large-scale underdetermined linear system of equations possessing a Kronecker structure, for which we have developed a greedy algorithm, Kronecker-OMP, as a generalization of the classical orthogonal matching pursuit (OMP) algorithm for vectors. We also introduce the concept of multiway block-sparse representation of N-way arrays and develop a new greedy algorithm that exploits not only the Kronecker structure but also block sparsity. This allows us to derive a very fast and memory-efficient algorithm called N-BOMP (N-way block OMP). We theoretically demonstrate that under the block-sparsity assumption, our N-BOMP algorithm not only has a considerably lower complexity but is also more precise than the classic OMP algorithm. Moreover, our algorithms can be used for very large-scale problems, which are intractable using standard approaches. We provide several simulations illustrating our results and comparing our algorithms to classical algorithms such as OMP and BP (basis pursuit) algorithms. We also apply the N-BOMP algorithm as a fast solution for the compressed sensing (CS) problem with large-scale data sets, in particular, for 2D compressive imaging (CI) and 3D hyperspectral CI, and we show examples with real-world multidimensional signals.

摘要

最近,人们对信号的稀疏表示产生了浓厚的兴趣,假设信号(数据集)可以通过已知基(字典)的少数元素的线性组合很好地近似。已经开发了许多算法来为一维信号(向量)找到这样的表示,这需要找到欠定线性方程组的最稀疏解。在这封信中,我们通过使用 Tucker 模型将向量的稀疏表示理论推广到多维数组(张量) - 具有多维结构的信号 - 。因此,问题被简化为求解具有 Kronecker 结构的大规模欠定线性方程组,为此我们开发了一种贪婪算法,Kronecker-OMP,作为经典正交匹配追踪(OMP)算法的推广向量。我们还引入了 N 路数组的多向块稀疏表示的概念,并开发了一种新的贪婪算法,该算法不仅利用了 Kronecker 结构,而且还利用了块稀疏性。这使我们能够推导出一种非常快速和节省内存的算法,称为 N-BOMP(N 路块 OMP)。我们从理论上证明,在块稀疏性假设下,我们的 N-BOMP 算法不仅复杂度大大降低,而且比经典的 OMP 算法更精确。此外,我们的算法可用于非常大规模的问题,而标准方法无法解决这些问题。我们提供了几个模拟来说明我们的结果,并将我们的算法与经典算法(例如 OMP 和 BP(基追踪)算法)进行比较。我们还将 N-BOMP 算法应用于具有大规模数据集的压缩感知(CS)问题的快速解决方案,特别是用于 2D 压缩成像(CI)和 3D 高光谱 CI,并且我们展示了具有实际多维信号的示例。

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