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首页> 外文期刊>International journal of applied earth observation and geoinformation >The effect of atmospheric and topographic correction on pixel-based image composites: Improved forest cover detection in mountain environments
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The effect of atmospheric and topographic correction on pixel-based image composites: Improved forest cover detection in mountain environments

机译:大气和地形校正对基于像素的图像合成的影响:改进了山区环境中的森林覆盖率检测

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摘要

Quantification of forest cover is essential as a tool to stimulate forest management and conservation. Image compositing techniques that sample the most suited pixel from multi-temporal image acquisitions, provide an important tool for forest cover detection as they provide alternatives for missing data due to cloud cover and data discontinuities. At present, however, it is not clear to which extent forest cover detection based on compositing can be improved if the source imagery is firstly corrected for topographic distortions on a pixel-basis. In this study, the results of a pixel compositing algorithm with and without preprocessing topographic correction are compared for a study area covering 9 Landsat footprints in the Romanian Carpathians based on two different classifiers: Maximum Likelihood (ML) and Support Vector Machine (SVM). Results show that classifier selection has a stronger impact on the classification accuracy than topographic correction. Finally, application of the optimal method (SVM classifier with topographic correction) on the Romanian Carpathian Ecoregion between 1985, 1995 and 2010 shows a steady greening due to more afforestation than deforestation. (C) 2014 Elsevier B.V. All rights reserved.
机译:量化森林覆盖率对于刺激森林管理和保护至关重要。图像合成技术从多时间图像采集中采样最适合的像素,为森林覆盖率检测提供了重要工具,因为它们为由于云层覆盖和数据不连续而丢失的数据提供了替代方法。但是,目前尚不清楚,如果首先针对像素基础上的地形失真校正源图像,则可以在多大程度上改善基于合成的森林覆盖率检测。在这项研究中,基于两个不同的分类器(最大似然(ML)和支持向量机(SVM)),比较了包含和不包含预处理地形校正的像素合成算法的结果,该研究区域覆盖了罗马尼亚喀尔巴阡山脉的9个Landsat足迹。结果表明,与地形校正相比,分类器选择对分类精度的影响更大。最后,在1985、1995和2010年之间在罗马尼亚喀尔巴阡生态区中应用最佳方法(带地形校正的SVM分类器)显示,由于植树造林多于砍伐森林,绿化稳定。 (C)2014 Elsevier B.V.保留所有权利。

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