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A Post-processing Technique for Lagrangian Artificial Neural Network Approach to Hyperspectral Image Classification

机译:拉格朗日人工神经网络方法在高光谱图像分类中的后处理技术

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摘要

Lagrangian Artificial Neural Network (LANN) has been proposed recently for hyperspectral image classification. It is an unsupervised technique that can simultaneously estimate the endmembers and their abundance fractions without any prior information. Since the implementation of the LANN is completely unsupervised, the number of estimated abundance fraction images (AFI) is equal to the number of bands, which display the distribution of the corresponding endmember materials in the image scene. We find out that many AFIs are highly correlated and visually similar. In order to facilitate the following data assessment, a two-stage post-processing approach will be proposed. First, the number of endmembers n_s resident in the image scene is estimated using a Neyman-Pearson hypothesis testing-based eigen-thresholding method. Next, an automatic searching algorithm will be applied to find the most distinct AFIs using the divergence as criterion, where the threshold is adjusted until the number of selected AFIs equals the n_s estimated in the first stage. The experimental results using AVIRIS data shows the efficiency of the proposed post-processing technique in distinct AFI selection.
机译:拉格朗日人工神经网络(LANN)最近被提出用于高光谱图像分类。这是一种无监督的技术,可以在没有任何先验信息的情况下同时估计端成员及其丰度分数。由于LANN的实施完全不受监督,因此估计的丰度分数图像(AFI)的数量等于波段的数量,这些波段显示图像场景中相应端构件材料的分布。我们发现许多AFI高度相关且在视觉上相似。为了促进以下数据评估,将提出两阶段的后处理方法。首先,使用基于Neyman-Pearson假设检验的特征阈值法估计图像场景中驻留的端成员数n_s。接下来,将使用散度作为标准,应用自动搜索算法来查找最不同的AFI,在此将阈值调整到所选AFI的数量等于在第一阶段估计的n_s。使用AVIRIS数据的实验结果表明,在不同的AFI选择中,提出的后处理技术的效率。

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