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Extracting urban vegetation characteristics using spectral mixture analysis and decision tree classifications

机译:使用光谱混合分析和决策树分类提取城市植被特征

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摘要

Urban vegetation cover is a critical component in urban systems modeling and recent advances in remote sensing technologies can provide detailed estimates of vegetation characteristics. In the present study we classify urban vegetation characteristics, including species and condition, using an approach based on spectral unmixing and statistically developed decision trees. This technique involves modeling the location and separability of vegetation characteristics within the spectral mixing space derived from high spatial resolution Quickbird imagery for the City of Vancouver, Canada. Abundance images, field based land cover observations and shadow estimates derived from a LiDAR (Light Detection and Ranging) surface model are applied to develop decision tree classifications to extract several urban vegetation characteristics. Our results indicate that along the vegetation-dark mixing line, tree and vegetated ground cover classes can be accurately separated (80% and 94% of variance explained respectively) and more detailed vegetation characteristics including manicured and mixed grasses and deciduous and evergreen trees can be extracted as second order hierarchical categories with variance explained ranging between 67% and 100%. Our results also suggest that the leaf-off condition of deciduous trees produce pixels with higher dark fractions resulting from branches and soils dominating the reflectance values. This research has important implications for understanding fine scale biophysical and social processes within urban environments.
机译:城市植被覆盖度是城市系统建模的关键组成部分,遥感技术的最新进展可以提供有关植被特征的详细估计。在本研究中,我们使用基于光谱分解和统计发展的决策树的方法对城市植被特征(包括物种和条件)进行分类。这项技术涉及对光谱特征空间中植被特征的位置和可分离性进行建模,该光谱特征来自加拿大温哥华市的高空间分辨率Quickbird影像。从LiDAR(光检测和测距)表面模型得出的丰富图像,基于野外的土地覆盖观测结果和阴影估计值可用于开发决策树分类,以提取一些城市植被特征。我们的研究结果表明,沿着植被-黑暗混合线,树木和植被覆盖的类别可以被精确地分离(分别解释了80%和94%的方差),并且可以得到更详细的植被特征,包括修剪过的草和混合草以及落叶乔木和常绿乔木。提取为二阶分层类别,方差在67%到100%之间。我们的结果还表明,落叶树的落叶条件会产生由较高的暗度分数引起的像素,这是由于树枝和土壤主导了反射率值。这项研究对于理解城市环境中的小型生物物理和社会过程具有重要意义。

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