Spectral library pruning based on classification techniques

H. Fayyazi, H. Dehghani, M. Hosseini
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引用次数: 3

Abstract

Spectral unmixing is an active research area in remote sensing. The direct use of the spectral libraries in spectral unmixing is increased by increasing the availability of the libraries. In this way, the spectral unmixing problem is converted into a sparse regression problem that is time-consuming. This is due to the existence of irrelevant spectra in the library. So these spectra should be removed in some way. In this paper, a machine learning approach for spectral library pruning is introduced. At first, the spectral library is clustered based on a simple and efficient new feature space. Then the training data needed to learn a classifier are extracted by adding different noise levels to the clustered spectra. The label of the training data is determined based on the results of spectral library clustering. After learning the classifier, each pixel of the image is classified using it. For pruning the library, the spectra with the labels that none of the image pixels belong to, are removed. We use three classifiers, decision tree, neural networks and k-nearest neighbor to determine the effect of applying different classifiers. The results compared here show that the proposed method works well in noisy images.
基于分类技术的谱库剪枝
光谱分解是遥感领域的一个活跃研究领域。通过增加谱库的可用性,增加了谱库在光谱解混中的直接使用。这样,将光谱解混问题转化为一个耗时的稀疏回归问题。这是由于库中存在不相关的光谱。所以这些光谱应该以某种方式去除。本文介绍了一种用于谱库剪枝的机器学习方法。首先,基于简单高效的新特征空间对光谱库进行聚类。然后通过在聚类光谱中加入不同的噪声水平来提取学习分类器所需的训练数据。根据谱库聚类结果确定训练数据的标签。学习分类器后,使用它对图像的每个像素进行分类。为了对库进行修剪,将带有不属于图像像素的标签的光谱去除。我们使用决策树、神经网络和k近邻三种分类器来确定应用不同分类器的效果。实验结果表明,该方法能较好地处理噪声图像。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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