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Remote Sensing of Leaf Area Index from LiDAR Height Percentile Metrics and Comparison with MODIS Product in a Selectively Logged Tropical Forest Area in Eastern Amazonia

机译:基于LiDAR高度百分比度量的叶面积指数遥感以及与亚马逊东部择伐热带林区MODIS产品的比较

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Leaf area index (LAI) is an important parameter to describe the capacity of forests to intercept light and thus affects the microclimate and photosynthetic capacity of canopies. In general, tropical forests have a higher leaf area index and it is a challenge to estimate LAI in a forest with a very dense canopy. In this study, it is assumed that the traditional Light Detection and Ranging (LiDAR)-derived fractional vegetation cover (fCover) has weak relationship with leaf area index in a dense forest. We propose a partial least squares (PLS) regression model using the height percentile metrics derived from airborne LiDAR data to estimate the LAI of a dense forest. Ground inventory and airborne LiDAR data collected in a selectively logged tropical forest area in Eastern Amazonia are used to map LAI from the plot level to the landscape scale. The results indicate that the fCover, derived from the first return or the last return, has no significant correlations with the ground-based LAI. The PLS model evaluated by the leave-one-out validation shows that the estimated LAI is significantly correlated with the ground-based LAI with an R 2 of 0.58 and a root mean square error (RMSE) of 1.13. A data comparison indicates that the Moderate Resolution Imaging Spectrometer (MODIS) LAI underestimates the landscape-level LAI by about 22%. The MODIS quality control data show that in the selected tile, the cloud state is not the primary factor affecting the MODIS LAI performance; rather, the LAI from the main radiative transfer (RT) algorithm contributes much to the underestimation of the LAI in the tropical forest. In addition, the results show that the LiDAR-based LAI has a better response to the logging activities than the MODIS-based LAI, and that the leaf area reduction caused by logging is about 13%. In contrast, the MODIS-based LAI exhibits no apparent spatial correlation with the LiDAR-based LAI. It is suggested that the main algorithm of MODIS should be improved with regard to tropical forests. The significance of this study is the proposal of a framework to produce ground-based LAI using forest inventory data and determine the plot-level LAI at the airborne and satellite scale using LiDAR data.
机译:叶面积指数(LAI)是描述森林拦截光的能力的重要参数,因此会影响冠层的微气候和光合能力。通常,热带森林具有较高的叶面积指数,而在冠层非常茂密的森林中估计LAI是一个挑战。在这项研究中,假设在茂密森林中,传统的光探测与测距(LiDAR)衍生的分数植被覆盖度(fCover)与叶面积指数之间的关系较弱。我们提出了一个偏最小二乘(PLS)回归模型,该模型使用从机载LiDAR数据得出的高度百分比度量来估计茂密森林的LAI。在东亚马逊地区的一个选择性采伐的热带森林地区收集的地面清单和机载LiDAR数据用于将LAI从地块级别映射到景观级别。结果表明,从第一个收益或最后一个收益得出的fCover与基于地面的LAI没有显着相关性。通过留一法验证评估的PLS模型显示,估计的LAI与基于地面的LAI显着相关,R 2为0.58,均方根误差(RMSE)为1.13。数据比较表明,中分辨率成像光谱仪(MODIS)LAI低估了景观水平LAI约22%。 MODIS质量控制数据表明,在所选图块中,云状态不是影响MODIS LAI性能的主要因素;相反,来自主要辐射传递(RT)算法的LAI导致了热带森林中LAI的低估。此外,结果表明,基于LiDAR的LAI对测井活动的响应比基于MODIS的LAI更好,并且由测井引起的叶面积减少约13%。相反,基于MODIS的LAI与基于LiDAR的LAI没有明显的空间相关性。建议针对热带森林改进MODIS的主要算法。这项研究的意义在于提出了一个框架的建议,该框架使用森林清单数据生产地面LAI,并使用LiDAR数据确定机载和卫星规模的地块级LAI。

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