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首页> 外文期刊>Progress in Artificial Intelligence >Evaluation of effectiveness of supervised classification algorithms in land cover classification using ASTER images-A case study from the Mankweng (Turfloop) Area and its environs, Limpopo Province, South Africa
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Evaluation of effectiveness of supervised classification algorithms in land cover classification using ASTER images-A case study from the Mankweng (Turfloop) Area and its environs, Limpopo Province, South Africa

机译:利用ASTER图像评估陆地覆盖分类算法的有效性 - 以人类(Turfloop)地区及其周边,南非湖泊省的案例研究

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摘要

The production of land cover maps using supervised classification algorithms is one of the most common applications of remote sensing. In this study, the effectiveness of supervised classification algorithms in land cover classification using ASTER data was evaluated in the Mankweng Area and its environs. The false colour composite image generated from combination of band 1, 2 and 3 in red, green and blue, respectively, was used to generate training classes for six land cover types (waterbody, forest, vegetation, Duiwelskloof leucogranite, Turfloop granite and built-up land). These were used to construct land cover maps using eight supervised classification algorithms: Maximum Likelihood, Minimum Distance, Support Vector Machine, Mahalanobis Distance, Parallelepiped, Neural Network, Spectral Angle Mapper and Spectral Information Divergence. To evaluate the effectiveness of the algorithms, the land cover maps were subjected to accuracy assessment to determine precision of the algorithms in accurately classifying the land cover types and level of confidence that can be attributed to the land cover maps. Most algorithms poorly performed in classifying spatially overlapping land cover types without abrupt boundaries. This indicates that the environmental conditions and distribution of land cover types can affect the performance of certain classification algorithms, and thus need to be considered prior to selection of algorithms. However, Support Vector Machine and Minimum Distance proved to be the two most effective algorithms as they provided better producer's and user's accuracy in the range of 80-100% for all land cover types, which represent good classification.
机译:使用监督分类算法的陆地覆盖地图的生产是遥感的最常见应用之一。在这项研究中,在人类地区及其环境中评估了使用ASTER数据的土地覆盖分类中监督分类算法的有效性。从红色,绿色和蓝色的带1,2和3的组合产生的假彩色合成图像用于为六种陆地覆盖类型产生培训类(水体,森林,植被,Duiwelskloof Leucogranite,Turfloop花岗岩和内置陆地)。这些用于使用八个监督分类算法构建陆地覆盖图:最大似然,最小距离,支持向量机,Mahalanobis距离,平行,神经网络,光谱角映射器和光谱信息发散。为了评估算法的有效性,对陆地覆盖图进行准确性评估,以确定准确分类陆地覆盖类型和可归因于陆地覆盖地图的抵制算法的精度。大多数算法在分类空间重叠的陆地覆盖类型而没有突然边界时进行。这表明陆地覆盖类型的环境条件和分布可以影响某些分类算法的性能,因此需要在选择算法之前考虑。然而,支持向量机和最小距离被证明是两个最有效的算法,因为它们提供了更好的生产者和用户的准确性,在所有土地覆盖类型的80-100%的范围内,这代表了良好的分类。

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