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Constrained Nonnegative Matrix Factorization Based on Particle Swarm Optimization for Hyperspectral Unmixing

机译:基于粒子群优化的高光谱解约束非负矩阵分解

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摘要

Spectral unmixing is an important part of hyperspectral image processing. In recent years, constrained nonnegative matrix factorization (CNMF) has been successfully applied for unmixing without the pure-pixel assumption and the result is physically meaningful. However, traditional CNMF algorithms always have two limitations: 1) Most of them are based on gradient methods and usually get trapped in a local optimum. 2) As they adopt static penalty function as the constraint handling method, it's difficult to choose a proper regularization parameter that can balance the tradeoff between reconstruction error and constraint well, which leads to the decreased accuracy. In this paper, we introduce particle swarm optimization (PSO) combined with two types of progressive constraint handling approaches for spectral unmixing in the framework of CNMF. A basic method called high-dimensional double-swarm PSO (HDPSO) algorithm is first proposed. It divides the original high-dimension problem into a series of easier subproblems and adopts two interactive swarms to search endmembers and abundances, respectively. Then, adaptive PSO (APSO) and multiobjective PSO algorithms are proposed by respectively incorporating adaptive penalty function and multiobjective optimization approaches into HDPSO. Experiments with both simulated data and real hyperspectral images are used to compare these methods with traditional algorithms and results validate that the proposed methods give better performance for spectral unmixing.
机译:光谱分解是高光谱图像处理的重要组成部分。近年来,在没有纯像素假设的情况下,约束非负矩阵分解(CNMF)已成功应用于分解,其结果在物理上是有意义的。但是,传统的CNMF算法始终有两个局限性:1)大多数算法都是基于梯度法的,通常会陷入局部最优状态。 2)由于采用静态惩罚函数作为约束处理方法,因此难以选择合适的正则化参数来很好地平衡重构误差与约束之间的权衡,从而导致准确性下降。在本文中,我们介绍了粒子群优化(PSO)与两种类型的渐进式约束处理方法相结合的方法,用于在CNMF框架中进行频谱分解。首先提出了一种称为高维双群PSO(HDPSO)算法的基本方法。它将原始的高维问题分为一系列更简单的子问题,并采用两个交互式群分别搜索末端成员和数量。然后,分别将自适应惩罚函数和多目标优化方法结合到HDPSO中,提出了自适应PSO(APSO)算法和多目标PSO算法。使用模拟数据和实际高光谱图像进行的实验将这些方法与传统算法进行了比较,结果验证了所提出的方法在光谱分解方面具有更好的性能。

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