利用Landsat-8影像建立广宁省下龙市土地覆盖图的影像分类方法比较

Khac Dang Vu
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摘要

长期以来,人们开发了许多基于像素的图像分类算法来识别土地覆盖,其中一些算法由于其效率和准确性而被广泛使用,如最大似然(MLC)、支持向量机(svm)和决策树(dt)。利用这些方法,利用Landsat-8卫星影像对下龙市土地覆盖进行了住宅、裸地、森林、农地、水面、煤田等分类。验证结果表明,这些分类方法的总体准确率(OA)和Kappa系数(K)较高,OA > 91%, K > 0.9。然而,与其他两种方法相比,dt方法提供的结果具有最高的准确性和最好的特征分离能力。所得结果可为下龙等具有复杂地表覆盖的相同区域选择图像分类方法。
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Comparison of image classification methods to establishing land cover map at Ha Long city, Quang Ninh province using the Landsat-8 images
For a long time, many pixel-based image classification algorithms have been developed for identifying land cover, some of which are commonly used due to their efficiency and accuracy such as Maximum Likelihood (MLC), Support Vector Machines (SVMs), and Decision Trees (DTs). These methods are applied to classify land cover in Ha Long city using Landsat-8 satellite images with several categories including residence, bare soil, forest, agricultural land, water surface, and coal field. The validation results show that the overall accuracy (OA) and Kappa coefficient (K) of these classification methods are high, with OA > 91 % and K > 0.9. However, compared to the other two methods, the DTs method provides the results with the highest accuracy and the best ability to separate features. The obtained results allow selecting the image classification method for identical areas with complicated land cover such as Ha Long.
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