基于GA-BFO的压缩感知信号重构

Dan Li, Muyu Li, Yi Shen, Yan Wang, Qiang Wang
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引用次数: 14

摘要

压缩感知理论主要包括稀疏表示、不相关采样和信号重构三个方面,其中信号重构是压缩感知的核心。信号稀疏性约束可以通过10范数最小化来实现,这是一个np困难问题,需要穷尽地列出原始信号的所有可能性,传统算法难以实现。提出了一种结合遗传算法和细菌觅食优化算法的基于智能优化算法的信号重构算法。该方法通过对群进行遗传和进化运算,找到全局最优解,可直接解决10范数最小化问题。数值模拟结果表明,该算法能达到理论优化性能,且优于OMP算法。
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GA-BFO based signal reconstruction for compressive sensing
The theory of compressive sensing (CS) mainly includes three aspects, i.e., sparse representation, uncorrelated sampling, and signal reconstruction, in which signal reconstruction serve as the core of CS. The constraint of signal sparsity can be implemented by l0 norm minimization, which is an NP-hard problem that requires exhaustively listing all possibilities of the original signal and is difficult to achieve by the traditional algorithm. This paper proposes a signal reconstruction algorithm based on intelligent optimization algorithm which combines genetic algorithm (GA) and Bacteria Foraging Optimization (BFO) algorithm. This method can find the global optimal solution by genetic and evolutionary operation to the group, which can solve l0 norm minimization directly. It has been proved through numerical simulations that the theoretical optimization performance can be achieved and the result is superior to that of OMP algorithm.
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