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首页> 外文期刊>Information Sciences: An International Journal >Incomplete variables truncated conjugate gradient method for signal reconstruction in compressed sensing
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Incomplete variables truncated conjugate gradient method for signal reconstruction in compressed sensing

机译:压缩感知中信号重构的不完全变量截断共轭梯度法

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Compressed sensing (CS) has stirred great interests in many fields of science, due to its ability to capture most information of compressible signals at a rate significantly below the Nyquist rate. Reconstructing the signal from random measurements is an important topic in CS. In this paper, a new algorithm- Incomplete variables Truncated Conjugate Gradient method (ITCG) is proposed to reconstruct the signal by solving a programming with '1 norm. By adjusting the parameters of ITCG, two specific algorithms are presented, i.e. ITCGvs for very sparse reconstruction and ITCG-nvs for not very sparse reconstruction. To make full use of the sparse nature of signals, ITCG can reconstruct them efficiently. The experiments show that the two algorithms of ITCG (especially ITCG-nvs) are much faster than competing methods in sparse reconstruction. In addition, it has been shown that ITCG-vs can converge after finite iterations under some decent conditions.
机译:压缩传感(CS)能够以大大低于奈奎斯特速率的速率捕获大多数可压缩信号信息,因此在许多科学领域引起了极大的兴趣。从随机测量中重建信号是CS中的重要主题。本文提出了一种新算法-不完全变量截断共轭梯度法(ITCG),通过求解'1范数编程来重构信号。通过调整ITCG的参数,提出了两种特定的算法,即用于非常稀疏重建的ITCGvs和用于非稀疏重建的ITCG-nvs。为了充分利用信号的稀疏性,ITCG可以有效地重构它们。实验表明,在稀疏重构中,两种ITCG算法(尤其是ITCG-nvs)比竞争方法要快得多。另外,已经表明,ITCG-vs可以在某些体面的条件下经过有限的迭代后收敛。

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