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首页> 外文期刊>IEEE Transactions on Signal Processing >Non-Negative Orthogonal Greedy Algorithms
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Non-Negative Orthogonal Greedy Algorithms

机译:非负正交贪婪算法

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摘要

Orthogonal greedy algorithms are popular sparse signal reconstruction algorithms. Their principle is to select atoms one by one. A series of unconstrained least-square subproblems of gradually increasing size is solved to compute the approximation coefficients, which is efficiently performed using a fast recursive update scheme. When dealing with non-negative sparse signal reconstruction, a series of non-negative least-squares subproblems have to be solved. Fast implementation becomes tricky since each subproblem does not have a closed-form solution anymore. Recently, non-negative extensions of the classical orthogonal matching pursuit and orthogonal least squares algorithms were proposed, using slow (i.e., non-recursive) or recursive but inexact implementations. In this paper, we revisit these algorithms in a unified way. We define a class of non-negative orthogonal greedy algorithms and exhibit their structural properties. We propose a fast and exact implementation based on the active-set resolution of non-negative least-squares and exploiting warm start initializations. The algorithms are assessed in terms of accuracy and computational complexity for a sparse spike deconvolution problem. We also present an application to near-infrared spectra decomposition.
机译:正交贪婪算法是流行的稀疏信号重建算法。它们的原理是一一选择原子。解决了一系列大小逐渐增加的无约束最小二乘子问题,以计算近似系数,可以使用快速递归更新方案有效地执行该近似系数。在处理非负稀疏信号重建时,必须解决一系列非负最小二乘子问题。由于每个子问题都不再具有封闭式解决方案,因此快速实施变得棘手。最近,提出了使用慢速(即非递归)或递归但不精确的实现的经典正交匹配追踪和正交最小二乘算法的非负扩展。在本文中,我们以统一的方式重新审视了这些算法。我们定义了一类非负正交贪婪算法,并展示其结构特性。我们提出了一种基于非负最小二乘的有效集分辨率并利用热启动初始化的快速而精确的实现。针对稀疏的尖峰反卷积问题,根据准确性和计算复杂性对算法进行了评估。我们还提出了近红外光谱分解的应用。

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