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基于近似 L₀ 范数最小化的梯度投影算法在压缩感知中的稀疏重建。

Gradient Projection with Approximate L₀ Norm Minimization for Sparse Reconstruction in Compressed Sensing.

机构信息

Institute of Optics and Electronics, Chinese Academy of Science, Chengdu 610209, China.

School of Optoelectronic Information, University of Electronic Science and Technology of China, Chengdu 610054, China.

出版信息

Sensors (Basel). 2018 Oct 9;18(10):3373. doi: 10.3390/s18103373.

Abstract

In the reconstruction of sparse signals in compressed sensing, the reconstruction algorithm is required to reconstruct the sparsest form of signal. In order to minimize the objective function, minimal norm algorithm and greedy pursuit algorithm are most commonly used. The minimum L₁ norm algorithm has very high reconstruction accuracy, but this convex optimization algorithm cannot get the sparsest signal like the minimum L₀ norm algorithm. However, because the L₀ norm method is a non-convex problem, it is difficult to get the global optimal solution and the amount of calculation required is huge. In this paper, a new algorithm is proposed to approximate the smooth L₀ norm from the approximate L₂ norm. First we set up an approximation function model of the sparse term, then the minimum value of the objective function is solved by the gradient projection, and the weight of the function model of the sparse term in the objective function is adjusted adaptively by the reconstruction error value to reconstruct the sparse signal more accurately. Compared with the pseudo inverse of L₂ norm and the L₁ norm algorithm, this new algorithm has a lower reconstruction error in one-dimensional sparse signal reconstruction. In simulation experiments of two-dimensional image signal reconstruction, the new algorithm has shorter image reconstruction time and higher image reconstruction accuracy compared with the usually used greedy algorithm and the minimum norm algorithm.

摘要

在压缩感知中的稀疏信号重建中,需要重建算法重建信号的最稀疏形式。为了最小化目标函数,最常用的是最小范数算法和贪婪追踪算法。最小 L₁范数算法具有非常高的重建精度,但这种凸优化算法无法像最小 L₀范数算法那样获得最稀疏的信号。然而,由于 L₀范数方法是一个非凸问题,很难获得全局最优解,并且所需的计算量非常大。本文提出了一种新的算法,通过逼近 L₂范数来逼近光滑的 L₀范数。首先,我们建立稀疏项的近似函数模型,然后通过梯度投影求解目标函数的最小值,并通过重构误差值自适应调整稀疏项函数模型在目标函数中的权重,以更准确地重建稀疏信号。与 L₂范数的伪逆和 L₁范数算法相比,该新算法在一维稀疏信号重建中具有更低的重建误差。在二维图像信号重建的仿真实验中,与常用的贪婪算法和最小范数算法相比,该新算法具有更短的图像重建时间和更高的图像重建精度。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/60e6/6210964/e4b93ae5942c/sensors-18-03373-g001.jpg

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本文引用的文献

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