Sparse Signal Recovery via Improved Sparse Adaptive Matching Pursuit Algorithm

Linyu Wang, Mingqi He, Jianhong Xiang
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引用次数: 1

Abstract

The accurate reconstruction of a signal within a reasonable period is the key process that enables the application of compressive sensing in large-scale image transmission. The sparsity adaptive matching pursuit (SAMP) algorithm does not need prior knowledge on signal sparsity and has high reconstruction accuracy but has low reconstruction efficiency. To overcome the low reconstruction efficiency, we propose the use of the fast segmentation sparsity adaptive matching pursuit (FSSAMP) algorithm, where the value of K estimated in each iteration increases in a nonlinear manner instead of undergoing linear growth. This form can reduce the number of iterations by accurate signal sparsity degree evaluation. In addition, we use signal segmentation strategies in the proposed algorithm to improve the algorithm accuracy. Experimental results demonstrated that the FSSAMP algorithm has more stable reconstruction performance and higher reconstruction accuracy than the SAMP algorithm.
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基于改进稀疏自适应匹配追踪算法的稀疏信号恢复
在合理的时间内准确地重建信号是实现压缩感知在大规模图像传输中应用的关键。稀疏度自适应匹配追踪(SAMP)算法不需要对信号稀疏度的先验知识,重构精度高,但重构效率低。为了克服重建效率低的问题,我们提出使用快速分割稀疏度自适应匹配追踪(FSSAMP)算法,其中每次迭代中估计的K值以非线性方式增加,而不是线性增长。这种形式可以通过精确的信号稀疏度评估来减少迭代次数。此外,我们在算法中使用了信号分割策略来提高算法的精度。实验结果表明,FSSAMP算法比SAMP算法具有更稳定的重建性能和更高的重建精度。
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