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Ensemble of Winter’s belief based frameworks for Hyperspectral Endmember Extraction

机译:冬季信仰的基于框架的合奏框架的高光谱终点提取

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The goal of Hyper-Spectral Unmixing (HSU) is to decompose HSC imagery into a group of pure material spectral signatures also known as endmember signatures and fractional proportions weights that characterize the contribution of each endmember in forming a sample. In 1999, Winter’s proposed an idea to address HSU that considers vertices of a simplex whose volume is maximum as pure pixel vectors. In hyperspectral remote sensing, this belief has much influence on HSU, especially on endmember extraction methods. Moreover, this belief has inspired much attention, resulting in various endmember extraction frameworks such as Simplex Growing Algorithm (SGA), N-point FINDeR (NFINDR), Alternating Volume Maximization (AVMAX), Successive Volume Maximization (SVMAX). In this paper, we propose an ensemble of these frameworks intending to utilize the best part of the result of each framework. The proposed ensemble framework uses a majority voting approach. Our experiments, applied on four hyperspectral datasets (Cuprite, Urban, Samson and Jasper), expose that the ensemble framework by majority voting can provide efficient and competitive performance compared to individual winter’s belief-based endmember extraction frameworks.
机译:超光谱解密(HSU)的目标是将HSC图像分解成一组纯材料光谱签名,该组纯材料谱签名也称为终点签名和分数比例重量,其表征每个端部的贡献形成样品。 1999年,冬季提出了一个想法,可以解决训练其体积最大的单纯素的顶点作为纯像素向量的HSU。在高光谱遥感中,这种信念对HSU产生了很大影响,特别是在EndMember提取方法上。此外,这种信念启发了很多关注,导致各种终端月提取框架,如单纯克生长算法(SGA),N点查找器(NFINDR),交替体积最大化(AVMAX),连续体积最大化(SVMAX)。在本文中,我们提出了一个打算利用每个框架结果的最佳部分的这些框架的集合。拟议的集合框架使用了大多数投票方式。我们的实验,应用四个高光谱数据集(赤铜矿,城市,参孙和碧玉),暴露通过多数表决的整体框架可以相比,个别冬天的基于信念端元提取框架提供高效和有竞争力的表现。

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