GAEEII: An Optimised Genetic Algorithm Endmember Extractor for Hyperspectral Unmixing

Douglas Winston Ribeiro Soares, G. Laureano, C. Camilo-Junior
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引用次数: 2

Abstract

Endmember Extraction is a critical step in hyper-spectral unmixing and classification providing the basis to applications such as identification of minerals [1], vegetation analysis [2], geographical survey [3] and others [4] [5]. It determines the basic constituent materials contained in the image while providing the requirements to the abundance inversion process, used to obtain the percentage of several endmembers in each pixel. Nevertheless, low spatial resolution and computing time are two major difficulties, the first due to the spatial interactions of different fractions of mixed endmembers and the second due to the strict and extensive search utilized in state-of-the-art methods. In this paper, we propose a novel endmember extractor, so-called GAEEII, based on a multi epochs genetic algorithm with enhancements to the naive genetic algorithm endmember extractor (GAEE). We introduce the following additions to the GAEE: a two-dimensional gene initialization, a permutation crossover, a 2D step Gaussian mutation, and an epoch ensemble. To demonstrate the superiority of our proposed method, we conduct extensive experiments on several well-known real and synthetic datasets, as well as a possible relation to the spectral angle distance (SAD) and the volume of the simplex. The results confirm that the proposed method considerably improves the performance in accuracy and computing time compared to the state-of-the-art techniques in the literature including recent developments.
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一种优化的遗传算法用于高光谱解混
端元提取是高光谱分解和分类的关键步骤,为矿物鉴定[1]、植被分析[2]、地理调查[3]等[4][5]提供了基础。它确定了图像中包含的基本成分材料,同时为丰度反演过程提供了要求,用于获得每个像素中几个端元的百分比。然而,低空间分辨率和计算时间是两个主要的困难,第一个是由于混合端元的不同部分的空间相互作用,第二个是由于在最先进的方法中使用的严格和广泛的搜索。本文提出了一种基于多时代遗传算法的端元提取器GAEEII,该算法对原始遗传算法的端元提取器GAEE进行了改进。我们在GAEE中添加了以下内容:二维基因初始化、置换交叉、二维步进高斯突变和历元集合。为了证明我们提出的方法的优越性,我们在几个已知的真实和合成数据集上进行了广泛的实验,以及光谱角距离(SAD)和单纯形体积之间的可能关系。结果证实,与文献中包括最近发展的最先进技术相比,所提出的方法在精度和计算时间方面显着提高了性能。
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