高光谱成像
端元
像素
非负矩阵分解
模式识别(心理学)
矩阵分解
人工智能
计算机科学
正规化(语言学)
图像分辨率
光谱特征
空间分析
先验概率
全光谱成像
丰度估计
数学
遥感
贝叶斯概率
丰度(生态学)
统计
地理
特征向量
量子力学
物理
渔业
生物
作者
Xintong Tan,Qi Yu,Zelong Wang,Jubo Zhu
标识
DOI:10.1109/jsen.2021.3118885
摘要
Due to the limited spatial resolution of hyperspectral sensors, each pixel in hyperspectral image often consists of several components, called endmembers. Hyperspectral unmixing aims at extracting these endmembers and corresponding fractional abundances from the hyperspectral image (HSI) data. With the availability of spectral libraries, semi-supervised unmixing which estimates the abundance from given endmember matrix, have become more and more popular. General semi-supervised methods take advantage of the sparsity constraint on the abundance matrix and consider the pixels as independent trials. However, the spatial information for example the correlation between pixels often cannot be taken into consideration. In this paper, we derive a semi-supervised hyperspectral image unmixing algorithm which handles both spectral and spatial prior efficiently using matrix factorization. The abundance matrix is recast as a multiplication of two variables, in which the spectral and spatial priors are captured respectively. Numerical tests in both simulated and real datasets show that compared to state-of-the-art unmixing algorithms, the proposed spectral-spatial factorization method has lower computation cost, better unmixing results, and is more robust to regularization parameter selection.
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