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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >On the use of small training sets for neural network-based characterization of mixed pixels in remotely sensed hyperspectral images
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On the use of small training sets for neural network-based characterization of mixed pixels in remotely sensed hyperspectral images

机译:使用小型训练集进行基于神经网络的遥感高光谱图像中混合像素的表征

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摘要

In this work, neural network-based models involved in hyperspectral image spectra separation are considered. Focus is on how to select the most highly informative samples for effectively training the neural architecture. This issue is addressed here by several new algorithms for intelligent selection of training samples: (1) a border-training algorithm (BTA) which selects training samples located in the vicinity of the hyperplanes that can optimally separate the classes; (2) a mixed-signature algorithm (MSA) which selects the most spectrally mixed pixels in the hyperspectral data as training samples; and (3) a morphological-erosion algorithm (MEA) which incorporates spatial information (via mathematical morphology concepts) to select spectrally mixed training samples located in spatially homogeneous regions. These algorithms, along with other standard techniques based on orthogonal projections and a simple Maximin-distance algorithm, are used to train a multi-layer perceptron (MLP), selected in this work as a representative neural architecture for spectral mixture analysis. Experimental results are provided using both a database of nonlinear mixed spectra with absolute ground truth and a set of real hyperspectral images, collected at different altitudes by the digital airborne imaging spectrometer (DAIS 7915) and reflective optics system imaging spectrometer (ROSIS) operating simultaneously at multiple spatial resolutions.
机译:在这项工作中,考虑了涉及高光谱图像光谱分离的基于神经网络的模型。重点是如何选择信息量最大的样本以有效地训练神经体系结构。此问题通过几种用于智能选择训练样本的新算法解决:(1)边界训练算法(BTA),该算法选择位于超平面附近的训练样本,可以最佳地分离类别; (2)混合签名算法(MSA),它选择高光谱数据中光谱最混合的像素作为训练样本; (3)形态学侵蚀算法(MEA),它结合了空间信息(通过数学形态学概念)来选择位于空间均质区域中的频谱混合训练样本。这些算法以及其他基于正交投影的标准技术和简单的Maximin距离算法一起用于训练多层感知器(MLP),在这项工作中将其选作代表性的神经网络进行光谱混合分析。使用具有绝对地面真相的非线性混合光谱数据库和一组实际的高光谱图像(由数字机载成像光谱仪(DAIS 7915)和反射光学系统成像光谱仪(ROSIS)在不同高度同时运行)收集的实验结果,可以提供实验结果)多种空间分辨率。

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