Nonlinear Spectral Unmixing using Semi-Supervised Standard Fuzzy Clustering

Shaheera Rashwan
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Abstract

Coarse resolution captured in remote sensing causes the combination of different materials in one pixel, called the mixed pixel. Spectral unmixing estimates the combination of endmembers in mixed pixels and their corresponding abundance maps in the Hyper/Multi spectral image. In this paper, a nonlinear spectral unmixing based on semi-supervised fuzzy clustering is proposed. First, pure pixels (endmembers) using Vertex Component Analysis (VCA) are extracted and those pixels are the labelled pixels where the membership value of each is 1 for the corresponding endmember and 0 for the others. Second, the semi-supervised fuzzy clustering is applied to find the membership matrix defining the fraction of the endmember in each mixed pixel and hence extract the abundance maps. The experiments were conducted on both synthetic data such as the Legendre data and real data such as Jasper Ridge data. The non-linearity of the Legendre data was performed by the Fan model on different signal-tonoise ratio values. The results of the new unmixing model show its significant performance when compared with four state-of the art unmixing algorithms
基于半监督标准模糊聚类的非线性光谱解混
在遥感中捕获的粗分辨率导致不同的材料组合在一个像元上,称为混合像元。光谱分解估计混合像元的端元组合及其在超/多光谱图像中相应的丰度图。提出了一种基于半监督模糊聚类的非线性光谱分解方法。首先,使用顶点分量分析(VCA)提取纯像素(端元),这些像素是标记像素,其中每个像素的对应端元的隶属度值为1,其他像素的隶属度值为0。其次,采用半监督模糊聚类方法,找到定义端元在每个混合像素中所占比例的隶属度矩阵,提取丰度图;实验采用了Legendre等合成数据和Jasper Ridge等真实数据。采用Fan模型对不同信噪比值下的Legendre数据进行非线性分析。与现有的四种解混算法进行了比较,结果表明该解混模型具有较好的解混性能
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