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A support vector machine classifier based on a new kernel function model for hyperspectral data

机译:基于新核函数模型的高光谱数据支持向量机分类器

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摘要

The kernel function is a key factor to determine the performance of a support vector machine (SVM) classifier. Choosing and constructing appropriate kernel function models has been a hot topic in SVM studies. But so far, its implementation can only rely on the experience and the specific sample characteristics without a unified pattern. Thus, this article explored the related theories and research findings of kernel functions, analyzed the classification characteristics of EO-1 Hyperion hyperspectral imagery, and combined a polynomial kernel function with a radial basis kernel function to form a new kernel function model (PRBF). Then, a hyperspectral remote sensing imagery classifier was constructed based on the PRBF model, and a genetic algorithm (GA) was used to optimize the SVM parameters. On the basis of theoretical analysis, this article completed object classification experiments on the Hyperion hyperspectral imagery of experimental areas and verified the high classification accuracy of the model. The experimental results show that the effect of hyperspectral image classification based on this PRBF model is apparently better than the model established by a single global or local kernel function and thus can greatly improve the accuracy of object identification and classification. The highest overall classification accuracy and kappa coefficient reached 93.246% and 0.907, respectively, in all experiments.
机译:内核功能是确定支持向量机(SVM)分类器性能的关键因素。选择和构建适当的内核功能模型一直是SVM研究中的热门话题。但是到目前为止,它的实现只能依靠经验和特定的样本特征,而没有统一的模式。因此,本文探索了核函数的相关理论和研究成果,分析了EO-1 Hyperion高光谱图像的分类特征,并将多项式核函数与径向基核函数相结合,形成了一个新的核函数模型(PRBF)。然后,基于PRBF模型构建了高光谱遥感影像分类器,并利用遗传算法(GA)对SVM参数进行了优化。在理论分析的基础上,完成了在实验区域的Hyperion高光谱图像上的目标分类实验,验证了该模型的高分类精度。实验结果表明,基于该PRBF模型的高光谱图像分类效果明显优于单个全局或局部核函数建立的模型,可以大大提高物体识别和分类的准确性。在所有实验中,最高的总分类准确度和kappa系数分别达到93.246%和0.907。

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