The linear mixed model constrained particle swarm optimization for hyperspectral endmember extraction from highly mixed data

Mingming Xu, Liangpei Zhang, Bo Du, Lefei Zhang
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引用次数: 4

Abstract

Spectral unmixing is one of the most important techniques for analyzing hyperspectral images and many hyperspectral unmixing algorithms were developed under an assumption that pure pixels exist in recent years. However, the pure-pixel assumption may be seriously violated for highly mixed data. Endmember extraction can be regards as an optimization problem no matter whether pure-pixel exists or not. In this paper, we incorporate linear mixed model and particle swarm optimization to develop a linear mixed model constrained particle swarm optimization (LMMC-PSO) for endmember extraction from highly mixed data. Each particle in LMMC-PSO moves in search space according to linear mixed model rather than with a velocity, which is dynamically adjusted according to its own optimal position and global optimum of all particles. The experimental results indicated that the proposed method obtained better results than the algorithms of VCA, MVC-NMF, MVSA, MVES, and SISAL.
基于线性混合模型约束的粒子群算法在高混合数据高光谱端元提取中的应用
光谱解混是高光谱图像分析的重要技术之一,近年来许多高光谱解混算法都是在假设纯像元存在的前提下发展起来的。然而,对于高度混合的数据,可能会严重违反纯像素假设。无论是否存在纯像素,端元提取都可以看作是一个优化问题。本文将线性混合模型与粒子群优化相结合,提出了一种基于线性混合模型约束粒子群优化(lmc - pso)的高混合数据端元提取方法。lmc - pso中的每个粒子在搜索空间中的运动是按照线性混合模型进行的,而不是按照速度运动,速度根据自身的最优位置和所有粒子的全局最优动态调整。实验结果表明,该方法比VCA、MVC-NMF、MVSA、MVES和SISAL算法获得了更好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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