首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Accurate modelling of canopy traits from seasonal Sentinel-2 imagery based on the vertical distribution of leaf traits
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Accurate modelling of canopy traits from seasonal Sentinel-2 imagery based on the vertical distribution of leaf traits

机译:基于叶片特征的垂直分布,从Sentinel-2季节性图像中对冠层特征进行精确建模

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Leaf traits at canopy level (hereinafter canopy traits) are conventionally expressed as a product of total canopy leaf area index (LAI) and leaf trait content based on samples collected from the exposed upper canopy. This traditional expression is centered on the theory that absorption of incident photosynthetically active radiation (PAR) follow a bell-shaped function skewed to the upper canopy. However, the validity of this theory has remained untested for a suite of canopy traits in a temperate forest ecosystem across multiple seasons using multispectral imagery. In this study, we examined the effect of canopy traits expression in modelling canopy traits using Sentinel-2 multispectral data across the growing season in Bavaria Forest National Park (BFNP), Germany. To achieve this, we measured leaf mass per area (LMA), chlorophyll (Cm,), nitrogen (N) and carbon content and LAI from the exposed upper and shaded lower canopy respectively over three seasons (spring, summer and autumn). Subsequently, we estimated canopy traits using two expressions, i.e. the traditional expression-based on the product of LAI and leaf traits content of samples collected from the sunlit upper canopy (hereinafter top-of-canopy expression) and the weighted expression - established on the proportion between the shaded lower and sunlit upper canopy LAI and their respective leaf traits content. Using a Random Forest machine-learning algorithm, we separately modelled canopy traits estimated from the two expressions using Sentinel-2 spectral bands and vegetation indices. Our results showed that dry matter related canopy traits (LMA, N and carbon) estimated based on the weighted canopy expression yield stronger correlations and higher prediction accuracy (NRMSEcv < 0.19) compared to the top-of-canopy traits expression across all seasons. In contrast, canopy chlorophyll estimated from the top-of-canopy expression demonstrated strong fidelity with Sentinel-2 bands and vegetation indices (RMSE < 0.48 mu g/cm(2)) compared to weighted canopy chlorophyll (RMSE > 0.48 mu g/cm(2)) across all seasons. We also developed a generalized model that explained 52.57-67.82% variation in canopy traits across the three seasons. Using the most accurate Random Forest model for each season, we demonstrated the capability of Sentinel-2 data to map seasonal dynamics of canopy traits across the park. Results presented in this study revealed that canopy trait expression can have a profound effect on modelling the accuracy of canopy traits using satellite imagery throughout the growing seasons. These findings have implications on model accuracy when monitoring the dynamics of ecosystem functions, processes and services.
机译:冠层水平的叶片性状(以下简称冠层性状)通常表示为总冠层叶面积指数(LAI)和基于从裸露的上部冠层收集的样品的叶片性状含量的乘积。这种传统表达方式以以下理论为中心:入射光合有效辐射(PAR)的吸收遵循偏向上冠层的钟形函数。然而,该理论的有效性仍未通过多光谱图像针对多个季节的温带森林生态系统中的一系列冠层性状进行检验。在这项研究中,我们使用Sentinel-2多光谱数据在整个德国巴伐利亚森林国家公园(BFNP)的生长期中研究了冠层性状表达在建模冠层性状中的作用。为了实现这一目标,我们分别在三个季节(春季,夏季和秋季)分别从暴露的上部和阴影下部冠层测量了单位面积的叶面积(LMA),叶绿素(Cm,),氮(N)和碳含量和LAI。随后,我们使用两个表达式来估计冠层性状,即传统表达式基于LAI和从阳光充足的上冠层(以下称冠层顶部表达式)收集的样本的叶性状含量和加权表达式-的乘积建立的。遮荫的下部和阳光遮盖的上部LAI之间的比例及其各自的叶片性状含量。使用随机森林机器学习算法,我们分别使用Sentinel-2谱带和植被指数对从两个表达式估算的冠层性状建模。我们的结果表明,与所有季节的冠层性状最高表达相比,基于加权冠层表达估算的与干物质相关的冠层性状(LMA,N和碳)产生更强的相关性和更高的预测准确性(NRMSEcv <0.19)。相比之下,与冠层叶绿素(RMSE> 0.48μg/ cm)相比,从冠层顶部表达估计的冠层叶绿素显示出Sentinel-2带和植被指数(RMSE <0.48μg / cm(2))的高度保真度。 (2))在所有季节。我们还开发了一个广义模型,该模型可以解释三个季节的冠层性状差异为52.57-67.82%。使用每个季节最准确的随机森林模型,我们证明了Sentinel-2数据能够绘制整个公园冠层性状的季节性动态的功能。这项研究提出的结果表明,在整个生长季节中,利用卫星图像对冠层性状的准确性建模可以产生深远的影响。这些发现对监测生态系统功能,过程和服务的动态时的模型准确性有影响。

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