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Mapping grassland vegetation cover based on Support Vector Machine and association rules

机译:基于支持向量机和关联规则的草地植被覆盖度制图

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Support Vector Machine (SVM) has been used to classify data and extensively explored in various fields. Instead of using original data as model inputs, we proposed here SVM modeling based on a nonlinear-mapping approach. Such a nonlinear data mapping for the SVM increased the hyperplane margin space, decreased the structural risk minimization (SRM), and thus improved the performance of SVMs in respect to image classification accuracy. The proposed approach was tested to classify vegetation cover for typical grassland in Northern China based on Landsat ETM+ data. The performance of SVMs with the nonlinear data mapping approach was evaluated against that without data mapping, and also compared to similar studies using different approaches as well. The results indicated that, in terms of image classification accuracy, the proposed method achieved the best result (82.7% with kappa =0.80).
机译:支持向量机(SVM)已用于对数据进行分类,并在各个领域中进行了广泛的探索。在这里,我们不是基于原始数据作为模型输入,而是基于非线性映射方法提出了SVM建模。用于SVM的这种非线性数据映射增加了超平面裕量空间,降低了结构风险最小化(SRM),因此就图像分类精度而言提高了SVM的性能。根据Landsat ETM +数据,对提议的方法进行了测试,以对中国北方典型草地的植被覆盖度进行分类。与没有数据映射的情况相比,评估了使用非线性数据映射方法的SVM的性能,并且还与使用不同方法的类似研究进行了比较。结果表明,在图像分类精度方面,该方法取得了最佳效果(82.7%,kappa = 0.80)。

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