A K-L divergence constrained sparse NMF for hyperspectral signal unmixing

Shaodong Wang, Nan Wang, D. Tao, Lefei Zhang, Bo Du
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引用次数: 8

Abstract

Hyperspectral unmixing is a hot topic in signal and image processing. A high-dimensional data can be decomposed into two non-negative low-dimensional matrices by Non-negative matrix factorization(NMF). However, the algorithm has many local solutions because of the non-convexity of the objective function. Some algorithms solve this problem by adding auxiliary constraints, such as sparse. The sparse NMF has good performance but the result is unstable and sensitive to noise. Using the structural information for the unmixing approaches can make the decomposition stable. Someone used a clustering based on Euclidean distance to guide the decomposition and obtain good performance. The Euclidean distance is just used to measure the straight line distance of two points, and the ground objects usually obey certain statistical distribution. It's difficult to measure the difference between the statistical distributions comprehensively by Euclidean distance. KL divergence is a better metric. In this paper, we propose a new approach named KL divergence constrained NMF which measures the statistical distribution difference using KL divergence instead of the Euclidean distance. It can improve the accuracy of structured information by using the KL divergence in the algorithm. Experimental results based on synthetic and real hyperspectral data show the superiority of the proposed algorithm with respect to other state-of-the-art algorithms.
高光谱信号解混的K-L散度约束稀疏NMF
高光谱解混是信号与图像处理领域的研究热点。利用非负矩阵分解(NMF)可以将高维数据分解为两个非负的低维矩阵。然而,由于目标函数的非凸性,该算法存在许多局部解。一些算法通过添加辅助约束(如稀疏)来解决这个问题。稀疏NMF具有良好的性能,但结果不稳定,对噪声敏感。在解混方法中使用结构信息可以使分解稳定。有人采用基于欧氏距离的聚类方法指导分解,取得了较好的效果。欧几里得距离只是用来测量两点之间的直线距离,地物通常服从一定的统计分布。用欧几里得距离来全面衡量统计分布之间的差异是很困难的。KL散度是一个更好的度量。本文提出了一种新的KL散度约束NMF方法,该方法使用KL散度代替欧氏距离来度量统计分布差异。利用算法中的KL散度可以提高结构化信息的准确性。基于合成和真实高光谱数据的实验结果表明,该算法相对于其他先进算法具有优越性。
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