Feature reduction in spectral unmixing using neural networks

Farshid Khajeh Rayeni, H. Ghassemian
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引用次数: 1

Abstract

Spectral unmixing (SU) is a standard approach to solve the mixed pixel problem in hyperspectral (HS) images. In this study, the application of feature reduction in SU using multi-layer perceptron (MLP) with some data-independent approaches is investigated. MLP is a popular artificial neural network that can learn complex nonlinear relationships between the endmembers and the abundance fractions in HS images if it is properly trained. So far, various approaches have been introduced to extract training samples from the data itself. Since it is not possible to access the actual abundance fractions of materials in real HS images, MLP training becomes complicated. Due to a large number of bands in HS images, complexity and large training time are some of the remaining problems that would be investigated in this study. In order to overcome the problem of unavailability of the actual abundance fractions, a synthetic library is generated based on scene mixture models. And some data-independent approaches, such as discrete cosine transform and discrete wavelet transform are utilized to reduce the complexity and the training time of the MLP. The experimental results are provided using both synthetic and real datasets with different mixture models. The results show the acceptable estimated abundance fractions with root mean square error, up to 0.0008 in the linear dataset and 0.0062 in the nonlinear dataset.
基于神经网络的光谱分解特征缩减
光谱分解(SU)是解决高光谱图像中混合像元问题的标准方法。本文研究了基于多层感知机(MLP)的特征约简在SU中的应用。MLP是一种流行的人工神经网络,它可以学习到HS图像中端元与丰度分数之间复杂的非线性关系。到目前为止,已经引入了各种方法来从数据本身中提取训练样本。由于不可能访问真实HS图像中材料的实际丰度分数,因此MLP训练变得复杂。由于HS图像的频带数量较多,复杂度和训练时间较长是本研究有待研究的问题。为了克服实际丰度分数不可用的问题,基于场景混合模型生成了一个合成库。并利用离散余弦变换和离散小波变换等与数据无关的方法来降低MLP的复杂度和训练时间。用不同混合模型的合成数据集和真实数据集给出了实验结果。结果表明,可接受的丰度估计分数具有均方根误差,在线性数据集中可达0.0008,在非线性数据集中可达0.0062。
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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