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An Evolutionary Multiobjective Approach to Sparse Reconstruction

机译:稀疏重构的进化多目标方法

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This paper addresses the problem of finding sparse solutions to linear systems. Although this problem involves two competing cost function terms (measurement error and a sparsity-inducing term), previous approaches combine these into a single cost term and solve the problem using conventional numerical optimization methods. In contrast, the main contribution of this paper is to use a multiobjective approach. The paper begins by investigating the sparse reconstruction problem, and presents data to show that knee regions do exist on the Pareto front (PF) for this problem and that optimal solutions can be found in these knee regions. Another contribution of the paper, a new soft-thresholding evolutionary multiobjective algorithm (StEMO), is then presented, which uses a soft-thresholding technique to incorporate two additional heuristics: one with greater chance to increase speed of convergence toward the PF, and another with higher probability to improve the spread of solutions along the PF, enabling an optimal solution to be found in the knee region. Experiments are presented, which show that StEMO significantly outperforms five other well known techniques that are commonly used for sparse reconstruction. Practical applications are also demonstrated to fundamental problems of recovering signals and images from noisy data.
机译:本文解决了寻找线性系统稀疏解的问题。尽管此问题涉及两个相互竞争的成本函数项(测量误差和稀疏性诱导项),但先前的方法将这些合并为一个成本项,并使用常规的数值优化方法解决了该问题。相比之下,本文的主要贡献是使用多目标方法。本文从研究稀疏重建问题开始,并提出数据显示该问题的帕累托前沿(PF)上确实存在膝盖区域,并且可以在这些膝盖区域找到最佳解决方案。然后,提出了本文的另一项贡献,即一种新的软阈值进化多目标算法(StEMO),该算法使用一种软阈值技术来结合两种其他启发式方法:一种具有更大的机会来提高向PF收敛的速度,另一种更有可能改善解决方案沿PF的传播,从而可以在膝盖区域找到最佳解决方案。实验表明,StEMO明显优于稀疏重建常用的其他五种众所周知的技术。还演示了从噪声数据恢复信号和图像的基本问题的实际应用。

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