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INVESTIGATING THE CAPABILITY OF IRS-P6-LISS IV SATELLITE IMAGE FOR PISTACHIO FORESTS DENSITY MAPPING (CASE STUDY: NORTHEAST OF IRAN)

机译:调查用于开心森林密度测绘的IRS-P6-Liss IV卫星图像的能力(案例研究:伊朗东北部)

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In order to investigate the capability of satellite images for Pistachio forests density mapping, IRS-P6-LISS IV data were analyzed in an area of 500 ha in Iran. After geometric correction, suitable training areas were determined based on fieldwork. Suitable spectral transformations like NDVI, PVI and PCA were performed. A ground truth map included of 34 plots (each plot 1 ha) were prepared. Hard and soft supervised classifications were performed with 5 density classes (0-5%, 5-10%, 10-15%, 15-20% and > 20%). Because of low separability of classes, some classes were merged and classifications were repeated with 3 classes. Finally, the highest overall accuracy and kappa coefficient of 70% and 0.44, respectively, were obtained with three classes (0-5%, 5-20%, and > 20%) by fuzzy classifier. Considering the low kappa value obtained, it could be concluded that the result of the classification was not desirable. Therefore, this approach is not appropriate for operational mapping of these valuable Pistachio forests.
机译:为了调查卫星图像的开心林密度测绘的能力,IRS-P6-Liss IV数据在伊朗的500公顷面积中分析。在几何校正之后,基于实地工作确定合适的训练区域。进行合适的光谱变换,如NDVI,PVI和PCA。制备34个图中包含的地面真相地图(每种曲线1公顷)。用5个密度类(0-5%,5-10%,10-15%,15-20%和> 20%进行硬质和软的监督分类。由于课程的可分离能力低,合并了一些课程,并用3个课程重复分类。最后,通过模糊分类器,使用三类(0-5%,5-20%和> 20%)获得最高总体精度和70%和0.44的κ系数。考虑到所获得的低κ值,可以得出结论,分类的结果是不可取的。因此,这种方法不适用于这些有价值的开心林的操作绘图。

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