高光谱图像分类的监督学习模型特征选择与比较分析

Abu Sayeed, Md. Ali Hossain, Md. Rabiul Islam
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引用次数: 0

摘要

在遥感图像分类中,当核监督学习方法需要足够数量的训练样本时,它确实是一个令人生畏的问题。通常有一个至关重要的问题是定义和获取参考数据。对于高光谱图像的分类,需要对光谱信息进行改进,使其适合于地物的识别。本文将基于RBF核的支持向量机(KSVM)与光谱角映射器(SAM)在高光谱图像分类精度方面进行性能比较。在训练样本可用性有限的情况下,核支持向量机更适合学习者泛化出更好的超平面,并在新的维度特征空间中进行分类。在NASA机载可见红外光谱仪(AVIRIS)图像上进行了实验,结果表明KSVM优于SAM,获得了最高的精度。与SAM相比,KSVM具有更好的抗离群条件,显著降低了分类复杂度。
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Feature Selection and Comparative Analysis of the Supervised Learning Model for Hyperspectral Image Classification
In remote sensing image classification, really it is an intimidating when kernel supervised learning approaches stands in need of adequate amount of training samples. Often there is a vital problem for definition and acquisition of reference data. For Hyperspectral image classification, improved spectral information is required to make it suitable for ground object identification. In this paper, Support Vector Machine with RBF kernel (KSVM) and the spectral angle mapper (SAM) are used for performance comparison in terms of classification accuracy in Hyperspectral image classification. Kernel support vector machine is more preferable for the mastery to generalize better hyperplane when limited availability of training samples and separate the classes competently in a new dimension feature space. Experiments are performed on NASA Airborne Visible Infrared Spectrometer (AVIRIS) image and it shows KSVM outperforms SAM and obtains the highest accuracy. Due to more well-conditioned against the outliers, KSVM significantly reduced the classification complexities than SAM.
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