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Frontiers of Information Technology & Electronic Engineering
ISSN 2095-9184 (print), ISSN 2095-9230 (online)
2016 Vol.17 No.5 P.403-412
Non-negative matrix factorization based unmixing for principal component transformed hyperspectral data
Abstract: Non-negative matrix factorization (NMF) has been widely used in mixture analysis for hyperspectral remote sensing. When used for spectral unmixing analysis, however, it has two main shortcomings: (1) since the dimensionality of hyperspectral data is usually very large, NMF tends to suffer from large computational complexity for the popular multiplicative iteration rule; (2) NMF is sensitive to noise (outliers), and thus the corrupted data will make the results of NMF meaningless. Although principal component analysis (PCA) can be used to mitigate these two problems, the transformed data will contain negative numbers, hindering the direct use of the multiplicative iteration rule of NMF. In this paper, we analyze the impact of PCA on NMF, and find that multiplicative NMF can also be applicable to data after principal component transformation. Based on this conclusion, we present a method to perform NMF in the principal component space, named ‘principal component NMF’ (PCNMF). Experimental results show that PCNMF is both accurate and time-saving.
Key words: Non-negative matrix factorization (NMF), Principal component analysis (PCA), Endmember, Hyperspectral
创新点:本文研究了主成分分析的两个步骤(平移和投影)对非负矩阵分解的影响。然后提出了利用强迫正交的手段将主成分变换后的数据重新旋转到第一象限,使之能够适用于非负矩阵分解的乘式迭代公式。
方法:研究了主成分分析对非负矩阵分解的影响,并提出了消除主成分变换数据负值的方法。
结论:本文提出了一种在主成分特征空间中使用非负矩阵分解的高光谱图像解混方法。该方法使用强迫正交有效解决了主成分变换后的负值问题。模拟和真实数据均表明,相比于原始的非负矩阵分解,本文所提方法速度更快,提取的端元误差更小。
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DOI:
10.1631/FITEE.1600028
CLC number:
TP751.1
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On-line Access:
2024-08-27
Received:
2023-10-17
Revision Accepted:
2024-05-08
Crosschecked:
2016-04-25