Mapping the 3D Distribution of Shorea Tree Species Based Upon Information Extracted from Worldview-2 and LiDAR Data

N. Khalid, J. R. A. Hamid, Z. Latif, Abdul Rauf Abdul Rasam, N. M. Saraf
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引用次数: 2

Abstract

Mapping and monitoring trees in tropical forest is deemed necessary especially for forest personnel. Unfortunately, acquisition of tree parameters for mapping purposes are tedious due to labour intensive, timely and cost-consuming. Thus, the advancement of remote sensing technology which provides tree parameters economically in term of cost and time saving over large forest area is in demand. The intent of this study is to map the distribution of Shorea tree species in the Ampang Forest Reserve using information extracted from Worldview-2 and LiDAR datasets. The pan-sharpening Worldview-2 imagery was used to classify the tropical trees using the support vector machine (SVM) image classification method. The overall classification accuracy for SVM method was 90.28% and the individual accuracy for Shorea and mixed tree species ranges from 68.25% to 82.86%. Finally, the classified result was overlaid with tree height information extracted from LiDAR data and forming the 3D distribution of Shorea tree species in the dense tropical forest area.
基于Worldview-2和LiDAR数据提取的杉树树种三维分布制图
对热带森林中的树木进行测绘和监测被认为是必要的,特别是对林业人员而言。不幸的是,为了映射目的而获取树参数由于劳动密集、及时和成本高而繁琐。因此,需要发展遥感技术,在节省成本和时间方面经济地提供大面积森林的树木参数。本研究的目的是利用Worldview-2和LiDAR数据集提取的信息绘制安邦森林保护区的Shorea树种分布图。利用泛锐化的Worldview-2图像,采用支持向量机(SVM)图像分类方法对热带树木进行分类。SVM方法的总体分类准确率为90.28%,杉木和混交树的分类准确率为68.25% ~ 82.86%。最后,将分类结果与LiDAR数据提取的树高信息叠加,形成热带密林地区Shorea树种的三维分布。
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