基于约束半nmf和PCA变换的高光谱数据解混

H. Alizadeh, H. Ghassemian
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引用次数: 7

摘要

在高光谱解混过程中,波段间的相关性是一个未被考虑的问题。这种相关性使得不同材料的光谱特征难以分离。此外,大量的光谱带延长了解混过程的执行时间。本文提出了一种利用半非负矩阵因子(semi-NMF)和主成分分析(PCA)对高光谱数据进行解混的新方法,解决了波段间的相关性问题,减少了算法的执行时间。该方法利用解混过程中数据的主成分分析来代替原始数据。利用这种线性变换,将图像映射到不相关空间。不相关的图像使解混过程更有效。为了克服非凸代价函数引起的非唯一性解问题,在半nmf中引入了平滑性和稀疏性约束。该方法除精度高外,还提高了解混速度。实验结果表明,该方法与其他方法相比具有较好的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hyperspectral data unmixing using constrained semi-NMF and PCA transform
One of problems that have been not considered in unmixing process of hyperspectral is the correlation between bands. This correlation makes difficult the unmixing of spectral signatures of different materials. Furthermore, the large number of spectral bands extends the execution time of the unmixing process. In this paper, a new approach for the unmixing of hyperspectral data using the semi-Nonnegative Matrix Factor (semi-NMF) and Principal Component Analysis (PCA) is proposed that solves the problem of correlation between bands and decrease execution time of algorithm. The proposed approach uses from PCA of data in the unmixing process instead of original data. Using this linear transformation, the images are mapped to the uncorrelated space. Uncorrelated images make more efficient the unmixing process. In order to overcome the problem of non-uniqueness solution that is caused by the non-convex cost function, the smoothness and sparseness constraints are introduced to the semi-NMF. In addition to its high accuracy, the proposed method increases the speed of the unmixing process. The experimental results show excellence of the proposed approach in comparison of other methods.
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