基于平行六面体和马氏体距离的巴基斯坦林业识别分类

Umair Khan, N. Minallah, Ahmad Junaid, Kashaf Gul, N. Ahmad
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引用次数: 5

摘要

在过去的几年里,巴基斯坦见证了森林的迅速砍伐。它以频繁的洪水的形式对巴基斯坦的经济、基础设施和环境造成损害。为了保持数字稳定,需要经常进行调查。在通过广泛的地面调查收集地面真实情况时,通过遥感识别茂密的绿色森林是非常有效的。在接下来的研究中,比较了两种基于像素的监督分类算法,即平行六面体和Mahalanobis距离分类算法对巴基斯坦森林的分类。为此,使用SPOT-5高几何分辨率图像(2.5m)作为基础图像。参考马氏距离分类器的总体准确率为85.97%,kappa系数为0.8115,结果表明,平行六面体分类器总体准确率为95.4%,kappa系数值为0.937,是两种分类器中较好的一种。基于这些发现,平行六面体分类器优选用于巴基斯坦林业遥感。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Parallelepiped and Mahalanobis Distance based Classification for forestry identification in Pakistan
Rapid deforestation has been witnessed in Pakistan over the past few years. It is taking its toll on Pakistan economy, infrastructure, and environment in the form of frequent floods. In order to keep the numbers steady frequent surveys need to be conducted. Identifying lush green forests through remote sensing is quite effective when it comes to collecting ground truth reality through extensive ground surveys. In the following study two pixels based supervised classification algorithms i.e. Parallelepiped and Mahalanobis Distance Classification Algorithms are compared for classifying forests in Pakistan. For that purpose High Geometric Resolution Imagery of SPOT-5 (2.5m) is used as the base image. According to our results Parallelepiped Classification is proved to be the better one of the two with overall accuracy of 95.4% and kappa coefficient value of 0.937, with reference to the Mahalanobis Distance classifier with overall accuracy of 85.97% and kappa coefficient value equal to 0.8115. On the basis of these findings Parallelepiped Classifier is preferred to be used for the remote sensing of forestry in Pakistan.
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