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A Knee Point Driven Particle Swarm Optimization Algorithm for Sparse Reconstruction

机译:稀疏重建膝关节驱动粒子群优化算法

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Sparse reconstruction is a technique to reconstruct sparse signal from a small number of samples. In sparse reconstruction problems, the sparsity and measurement error should be minimized simultaneously, therefore they can be solved by multi-objective optimization algorithms. Most multi-objective optimizers aim to obtain the complete Pareto front. However only solutions in knee region of Pareto front are preferred in sparse reconstruction problems. It is a waste of time to obtain the whole Pareto front. In this paper, a knee point driven multi-objective particle swarm optimization algorithm (KnMOPSO) is proposed to solve sparse reconstruction problems. KnMOPSO aims to find the local part of Pareto front so that it can solve the sparse reconstruction problems fast and accurately. In KnMOPSO personal best particles and global best particle are selected with knee point selection scheme. In addition, solutions which are more likely to be knee points are preferred to others.
机译:稀疏重建是从少量样品重建稀疏信号的技术。在稀疏的重建问题中,应同时最小化稀疏性和测量误差,因此它们可以通过多目标优化算法来解决。大多数多目标优化器的目标是获得完整的帕累托前线。然而,在稀疏的重建问题中,帕雷托前面的膝部区域的解决方案是优选的。浪费时间来获得整个帕累托前面。本文提出了一种膝尖驱动的多目标粒子群优化算法(KNMOPSO)来解决稀疏的重建问题。 Knmopso旨在找到Pareto Front的本地部分,以便它可以快速准确地解决稀疏的重建问题。在KNMOPSO中,使用膝尖选择方案选择最佳颗粒和全球最佳粒子。此外,更容易成为膝关节点的溶液是优选的。

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