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Pixel-based Image Classification to Map Vegetation Communities using SPOT5 and Landsat TM in a Northern Territory Tropical Savanna, Australia

机译:基于像素的图像分类,使用SPOT5和Landsat TM在澳大利亚北部地区热带稀树草原上绘制植被群落图

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Traditional techniques to map vegetation communities are by aerial photography interpretation and intensive field sampling. Semi-automated methods, including pixel and object-based image classification, demonstrate potential to accurately map vegetation communities, however, there is a lack of comparative research. This study is a component of a broader research project that compares several techniques and image datasets to map vegetation communities. We evaluated a pixel-based supervised image classification using the Maximum Likelihood Classifier and floristic and structural field data applied to SPOT5 multispectral and Landsat5 TM. The study area covered a subset of Bullo River Station in the Top End of the Northern Territory, Australia. Twenty two vegetation communities were classified based on 411 full floristic and structural plots. Class separability averaged 1.94 and 1.42 for LandsatS TM and SPOT5 respectively. Overall accuracy ranged from 30-53% for 1:25000 and 1:100000 spatial scale products.
机译:映射植被群落的传统技术是通过航空摄影解释和密集的野外采样。半自动化方法,包括基于像素和基于对象的图像分类,显示出准确绘制植被群落的潜力,但是,缺乏比较研究。这项研究是一项广泛研究项目的组成部分,该研究项目比较了几种技术和图像数据集来绘制植被群落。我们使用最大似然分类器以及应用于SPOT5多光谱和Landsat5 TM的植物和结构场数据,评估了基于像素的监督图像分类。研究区域覆盖了澳大利亚北领地顶端的布洛河站的一部分。根据411个完整的植物区系和结构区对22个植被群落进行了分类。 LandsatS TM和SPOT5的类可分离性平均值分别为1.94和1.42。对于1:25000和1:100000空间规模产品,整体精度范围为30-53%。

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