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Comparison of Five Common Land Cover Supervised Classification Algorithms Based on GF-2 and Landsat8 Data

机译:基于GF-2和Landsat8数据的五个公共土地覆盖监督分类算法的比较

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With the development of remote sensing technology and the differences in remote sensing image classification, it is particularly important to be able to accurately use classification methods to classify images and to compare classification algorithms. In this paper, taking Yangshuo County as the research area, five common supervised classifications, namely support vector machine (SVM), maximum likelihood classification (MLC), neural network (NN), spectral angle mapping (SAM) and spectral information divergence (SID), are used to classify the land cover of remote sensing image data of GF-2、 Landsat8 and its fusion in the same area. The classification results are obtained and compared. Moreover, the overall classification accuracy (OA) and Kappa coefficient are used to evaluate the performance of the image classification algorithm. The results show that both MLC and SVM perform best on these three data sets. For higher spatial resolution GF-2 and fusion data, the OA and Kappa coefficients of both image data classifiers is 10% higher than those of Landsat8 data with higher spectral resolution.
机译:随着遥感技术的发展和遥感图像分类的差异,能够准确使用分类方法来对图像进行分类并比较分类算法尤为重要。在本文中,以阳朔县为研究区,五个常见的监督分类,即支持向量机(SVM),最大似然分类(MLC),神经网络(NN),光谱角映射(SAM)和光谱信息发散(SID ),用于将GF-2,Landsat8及其融合的遥感图像数据分类为遥感图像数据的陆地覆盖。获得并比较分类结果。此外,整体分类精度(OA)和Kappa系数用于评估图像分类算法的性能。结果表明,MLC和SVM都在这三种数据集上最佳地执行。对于较高的空间分辨率GF-2和融合数据,两种图像数据分类器的OA和Kappa系数比具有更高光谱分辨率的Landsat8数据高10%。

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