基于OLI卫星数据的指数微比例尺森林地图,以伊朗戈列斯坦省森林为例

A. Karimi, Sara Abdollahi, S. Eslamian, K. Ostad‑Ali‑Askari, V. Singh
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摘要

识别和诊断同质单位并将其分离并最终为每个单位单独规划被认为是管理森林单位和创建这些可信的森林类型地图的最基本方法,在为管理大范围森林生态系统做出最佳决策方面起着重要作用。循环林场法和地块勘探法确定森林类型需要花费大量的时间和费用。近年来,利用遥感数据的数字分类提供这些地图已引起人们的注意。创建这些单位的重要技巧是地图的比例。为了更精确地管理,需要更大的比例尺和更精确的地图。本研究的目的是对比利用Modis卫星1公里分辨率的Land Cover数据和LANDSAT卫星30公里分辨率的OLI传感器图像,利用植被指标和及时的PCA对森林类型进行识别和确定的观测分类方法,创建更大比尺、更好、更准确的同质森林单元分辨率图。最后通过验证,得出了对位于该国东北部的戈列斯坦省森林进行分类的最佳方法。
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Exponential Micro Scale of Forest’s Map by Satellite Data of Sensor OLI, Case Study: Forests of Golestan Province, Iran
Identify and diagnosis of homogenous units and separating them and eventually planning separately for each unit are considered the most principled way to manage units of forests and creating these trustable maps of forest’s types, plays important role in making optimum decisions for managing forest ecosystems in wide areas. Field method of circulation forest and Parcel explore to determine type of forest require to spend cost and much time. In recent years, providing these maps by using digital classification of remote sensing’s data has been noticed. The important tip to create these units is scale of map. To manage more accurate, it needs larger scale and more accurate maps. Purpose of this research is comparing observed classification of methods to recognize and determine type of forest by using data of Land Cover of Modis satellite with 1 kilometer resolution and on images of OLI sensor of LANDSAT satellite with 30 kilometers resolution by using vegetation indicators and also timely PCA and to create larger scale, better and more accurate resolution maps of homogenous units of forest. Eventually by using of verification, the best method was obtained to classify forest in Golestan province’s forest located on north-east of country.
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