首页> 外文会议>Geoscience and Remote Sensing Symposium, 2003. IGARSS '03. Proceedings. 2003 IEEE International >Evaluation of the potential of Landsat ETM+ for forest density mapping in zagros forests of Iran
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Evaluation of the potential of Landsat ETM+ for forest density mapping in zagros forests of Iran

机译:评价Landsat ETM +在伊朗扎格罗斯森林中进行森林密度制图的潜力

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Forest in semi-arid regions as susceptible ecosystem needs to be managed based on accurate information. One of the most important information is forest density. In this study the potential of Landsat ETM+ data in forest density (canopy area percentage) mapping was investigated. ETM image from a rugged forested area (50000 ha) in west of Iran, dating may 2000, was analyzed. The quality of the image was first evaluated. No noticeable radiometric and geometric distortion was detected. Image orthorectification was performed using the satellite ephemeris data, an accurate digital elevation model and 14 ground control points. The RMS error was less than half of a pixel. A precise ground truth map with four forest density classes was prepared for 20% of the study area. 26 aerial photographs (1:40000) dated June 1997 were interpreted visually based on fieldwork. The resulted forest density polygons were digitized to generate the ground truth map. Various synthetic bands such as bands resulted from image fusion, principal component analysis, tasseled cap transformation and band rationing were used. The best spectral band-sets for classification were selected using "Bhattacharrya distance" criterion based on training areas. The supervised classification of data was performed using spectral angle mapper (SAM), maximum likelihood, minimum distance to mean and parallelepiped classifiers. Along with four density classes (very thin, thin, semi-dense and dense) MD classifier showed the highest overall accuracy and kappa coefficient equal to 53% and 0.39 respectively. Signature separability and classification accuracies showed that the second and the third classes had the most spectral reflection similarity. After merging these two classes the classification was repeated. In this case the ML classifier showed the highest overall accuracy and kappa coefficient equal to 66% and 0.50 respectively. Based on these results, in such regions, low forest canopy increases the role of background reflection. High spatial resolution image and advanced classification methods, such as object-base classification should be considered to improve the potential of this application.
机译:半干旱地区作为敏感生态系统的森林需要根据准确的信息进行管理。最重要的信息之一是森林密度。在这项研究中,研究了Landsat ETM +数据在森林密度(冠层面积百分比)制图中的潜力。分析了2000年5月伊朗西部崎forest森林地区(50000公顷)的ETM图像。首先评估图像的质量。没有检测到明显的辐射度和几何变形。使用卫星星历数据,精确的数字高程模型和14个地面控制点对图像进行正射校正。 RMS误差小于一个像素的一半。为研究区域的20%准备了具有四个森林密度等级的精确地面真相图。 1997年6月的26张航拍照片(1:40000)是根据野外工作进行视觉解释的。将得到的森林密度多边形数字化以生成地面真实地图。使用了各种合成谱带,例如图像融合,主成分分析,流苏帽变换和谱带配比所产生的谱带。基于训练区域,使用“ Bhattacharrya距离”标准选择用于分类的最佳光谱带集。使用光谱角度映射器(SAM),最大似然,到均值的最小距离和平行六面体分类器进行数据的监督分类。与四个密度等级(非常稀薄,稀薄,半致密和稠密)一起,MD分类器显示出最高的总体准确度和kappa系数,分别等于53%和0.39。签名的可分离性和分类精度表明,第二和第三类具有最大的光谱反射相似性。合并这两类后,重复分类。在这种情况下,ML分类器显示出最高的总体准确度和kappa系数,分别等于66%和0.50。根据这些结果,在这样的地区,低矮的林冠层增加了背景反射的作用。应该考虑使用高空间分辨率的图像和先进的分类方法,例如基于对象的分类,以提高此应用程序的潜力。

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