Landsat8 Satellite Image Classification with ERDAS for Mapping the Kalambatritra Special Reserve

Arisetra Razafinimaro, A. R. Hajalalaina, Zojaona Tantely Reziky, E. Delaître, A. Andrianarivo
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引用次数: 2

Abstract

This paper focuses on the Landsat 8 satellite image classification of the OLI sensor via the remote sensing software Erdas Imagine in order to calculate the land cover surface and to establish the mapping of the special reserve Kalambatritra of Madagascar for the year 2018. For this, we adopted the methodology of satellite image processing based on supervised classification algorithms. The processing was moved to spectral preparation and improvement of spatial resolution using the blue, green, red, near infrared and panchromatic channels. Then, a comparison study of the supervised classification algorithms was done to obtain a more accurate result. The validation of the classification results was performed using several reference points, a previous national processing result already validated in the field and the Google earth image of the same year. After repeating the classification several times, we obtained accuracies of 77%, 75%, 88%, 84% and 90% with Kappa indices of 0.64, 0.61, 0.80, 0.76 and 0.84 for the Spectral Angle Mapper, Spectral Correlation Mapper, Maximum Likelihood, Mahalanobis Distance and Minimum Distance. Based on these results, the minimum distance showed a higher accuracy and gave us 13462.1842 ha of forest area, 16798.8006 ha of prairie for the year 2018.
基于ERDAS的Landsat8卫星图像分类用于Kalambatritra保护区测绘
本文主要通过遥感软件Erdas Imagine对OLI传感器的Landsat 8卫星图像进行分类,计算出马达加斯加Kalambatritra特别保护区2018年的地表覆盖面积,并建立该保护区的地图。为此,我们采用了基于监督分类算法的卫星图像处理方法。利用蓝、绿、红、近红外和全色通道进行光谱制备和空间分辨率的提高。然后,对几种监督分类算法进行了比较研究,以获得更准确的分类结果。分类结果的验证使用了几个参考点,一个以前的国家处理结果已经在现场验证和同年的谷歌地球图像。经过多次重复分类,光谱角映射器、光谱相关映射器、最大似然、马氏距离和最小距离的Kappa指数分别为0.64、0.61、0.80、0.76和0.84,准确率分别为77%、75%、88%、84%和90%。基于这些结果,最小距离显示出更高的精度,2018年森林面积为13462.1842 ha,草原面积为16798.8006 ha。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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