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引用次数: 3
摘要
本文研究了一种结合三种光谱分解方法对高光谱数据进行聚类的决策融合方法。与标准的图像聚类技术不同,在纯像素的基础上分析高光谱数据可能不是一个真正的假设。同时,多个分类器系统通常比单个分类器表现出更好的性能。这是因为每个分类器在输入空间的不同区域会产生错误。考虑到这些事实,本文将这两种方法提炼成一种方法,并利用光谱分解算法和决策融合方法的优点。本文采用全约束最小二乘(FCLS)、非负约束最小二乘(NCLS)和和一约束最小二乘(SCLS)三种解混方法作为集成分类器,并将其结果在抽象级和测量级两个不同的融合层次上进行组合。在实际高光谱数据上的实验结果表明,该方法在调整随机指数(Adjusted Random Index, ARI)度量方面比K-Means和模糊c-Means具有更好的聚类效果。
A decision fusion approach for clustering of hyperspectral data using spectral unmixing methods
This paper aims at a decision fusion approach for combining three spectral unmixing methods to cluster hyperspectral data. Unlike standard image clustering techniques, analyzing hyperspectral data on a pure pixel basis may not be a true assumption. Meanwhile, multiple classifier systems often show better performance than each of the constituent classifiers. This is due to the fact that each classifier makes errors on different regions of the input space. With these facts in mind, this paper distills these two approaches into a single approach and exploits the advantages of both spectral unmixing algorithms and decision fusion methods. In this paper, three unmixing methods namely, Fully Constrained Least Squares (FCLS), Nonnegatively Constrained Least Squares (NCLS) and Sum-to-one Constrained Least Squares (SCLS) are employed as the ensemble classifiers and their results are combined at two different fusion levels: the abstract level and the measurement level. Experimental results on a real-world hyperspectral data proved that the proposed approach shows better clustering results compared to those of K-Means and Fuzzy c-Means in terms of the Adjusted Random Index (ARI) measure.