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Unsupervised linear spectral mixture analysis with AVIRIS data

机译:使用AVIRIS数据进行无监督的线性光谱混合分析

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摘要

A new algorithm for unsupervised hyperspectral data unmixing is investigated, which includes a modified minimum noise fraction (MNF) transformation and independent component analysis (ICA). The modified MNF transformation is used to reduce noise and remove correlation between neighboring bands. Then the ICA is applied to unmix hyperspectral images, and independent endmembers are obtained from unmixed images by using post-processing which includes image segmentation based on statistical histograms and morphological operations. The experimental results demonstrate that this algorithm can identify endmembers resident in mixed pixels. Meanwhile, the results show the high computational efficiency of the modified MNF transformation. The time consumed by the modified method is almost one fifth of the traditional MNF transformation.
机译:研究了一种用于无监督的高光谱数据分解的新算法,该算法包括改进的最小噪声分数(MNF)变换和独立分量分析(ICA)。改进的MNF变换用于减少噪声并消除相邻频段之间的相关性。然后,将ICA应用于取消混合的高光谱图像,并通过使用后处理(包括基于统计直方图和形态学运算的图像分割)来从未混合的图像中获得独立的端成员。实验结果表明,该算法可以识别混合像素中的末端成员。同时,结果表明改进的MNF变换具有较高的计算效率。改进方法消耗的时间几乎是传统MNF转换的五分之一。

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