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Super Greedy Type Algorithms and Applications in Compressed Sensing.

机译:超级贪心类型算法及其在压缩感知中的应用。

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摘要

In this manuscript we study greedy-type algorithms such that at a greedy step we pick several dictionary elements contrary to a single dictionary element in standard greedy-type algorithms. We call such greedy algorithms super greedy type algorithms. In the general setting, we propose several new greedy algorithms which are Super Greedy Algorithm (SGA), Orthogonal Super Greedy Algorithm (OSGA), and Orthogonal Super Greedy Algorithm with Thresholding (OSGAT) as well as their weak versions. The central question to be studied is what, if any, are the advantages of super greedy type algorithms over the standard greedy type algorithms. This question is answered by studying their performance (rate of convergence) under M-coherent dictionaries. Some new phenomena are found. For instance, Orthogonal Super Greedy Algorithm has the same convergence rate compared to Orthogonal Greedy Algorithm (OGA) with respect to incoherent dictionaries. However, OSGA is computationally simpler than the standard Orthogonal Greedy Algorithm.;The greedy approximation is already in serious numerical use, such as image/video processing, solution of operator equations, and etc. For instance, greedy approximation serves as one of the fundamental tools in sparse signal recovery. Using the super-greedy idea, we build new recovery algorithms in Compressed Sensing (CS) which are Orthogonal Multi Matching Pursuit (OMMP) and Orthogonal Multi Matching Pursuit with Thresholding Pruning (OMMPTP). The performances of there two algorithms are analyzed under Restricted Isometry Property (RIP) conditions.
机译:在本手稿中,我们研究贪婪型算法,以便在贪婪的步骤中,我们挑选出几个字典元素,而这些字典元素与标准贪婪型算法中的单个字典元素相反。我们称这种贪婪算法为超级贪婪类型算法。在一般情况下,我们提出了几种新的贪婪算法,它们是超级贪婪算法(SGA),正交超级贪婪算法(OSGA)和带阈值的正交超级贪婪算法(OSGAT)以及它们的弱版本。要研究的中心问题是,与标准贪婪类型算法相比,超级贪婪类型算法的优势是什么(如果有)。通过研究他们在M相干词典下的表现(收敛速度)可以回答这个问题。发现了一些新现象。例如,就非相干字典而言,正交超级贪婪算法与正交贪婪算法(OGA)的收敛速度相同。但是,OSGA在计算上比标准的正交贪婪算法更简单。贪婪近似已经在诸如图像/视频处理,算子方程解等严重的数字应用中使用。例如,贪婪近似是基本算法之一稀疏信号恢复的工具。使用超贪婪的想法,我们在压缩感知(CS)中构建了新的恢复算法,即正交多匹配追踪(OMMP)和阈值修剪的正交多匹配追踪(OMMPTP)。分析了两种算法在受限等距特性(RIP)条件下的性能。

著录项

  • 作者

    Liu, Entao.;

  • 作者单位

    University of South Carolina.;

  • 授予单位 University of South Carolina.;
  • 学科 Applied Mathematics.;Mathematics.
  • 学位 Ph.D.
  • 年度 2011
  • 页码 58 p.
  • 总页数 58
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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