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Assessing the potential for leaf-off LiDAR data to model canopy closure in temperate deciduous forests

机译:评估潜在的LiDAR数据来模拟温带落叶林冠层闭合的潜力

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Estimates of canopy closure have many important uses in forest management and ecological research. Field measurements, however, are typically not practical to acquire over expansive areas or for large numbers of locations. This problem has been addressed, in recent years, through the use of airborne light detection and ranging (LiDAR) technology which has proven effective in modeling canopy closure remotely. The techniques developed to use LiDAR for this purpose have been designed and evaluated for datasets acquired during leaf-on conditions. However, a large number of LiDAR datasets are acquired during leaf-off conditions since their primary purpose is to generate bare-earth Digital Elevation Models. In this paper, we develop and evaluate techniques for leveraging small-footprint leaf-off LiDAR data to model leaf-on canopy closure in temperate deciduous forests. We evaluate three techniques for modeling canopy closure: (1) the canopy-to-total-return-ratio (CTRR), (2) the canopy-to-total-pixel-ratio (CTPR), and (3) the hemispherical-viewshed (HV). The first technique has been used widely, in various forms, and has been shown to be effective with leaf-on LiDAR datasets. The CTRR technique that we tested uses the first-return LiDAR data only. The latter two techniques are new contributions that we develop and present in this paper. These techniques use Canopy Height Models (CHM) to detect significant gaps in the forest canopy which are of primary importance in estimating closure. The techniques we tested each showed good promise for predicting canopy closure using leaf-off LiDAR data with the CTPR and HV models having particularly high correlations with closure estimates from hemispherical photographs. The CTRR model had performance on par with results from previous studies that used leaf-on LiDAR, although, with leaf-off data the model tended to be negatively biased with respect to species having simple and compound leaf types and positively biased for coniferous species. The CTPR and HV models also showed some slight negative biases for compound-leaf species. The biases for the CTPR and HV models were mitigated when the CHM data were smoothed to fill in small gaps. The CHM-based models were robust to changes in the CHM model resolution which suggests that these methods may be applicable to a variety of small-footprint LiDAR datasets. In this research, the new CTPR and HV methods showed a strong ability to predict canopy closure using leaf-off data, however, future work will be needed to test the applicability of the models to variations in LiDAR datasets, forest types, and topography.
机译:冠层关闭的估计在森林管理和生态研究中有许多重要用途。然而,实地测量通常对于在广阔的区域或大量的位置进行采集是不实际的。近年来,已经通过使用机载光检测和测距(LiDAR)技术解决了这个问题,该技术已被证明可以有效地远程建模天篷闭合。为此目的设计并使用了LiDAR的技术已针对在叶子条件下获取的数据集进行了设计和评估。但是,在离开条件下会采集大量LiDAR数据集,因为它们的主要目的是生成地球数字高程模型。在本文中,我们开发和评估了利用小脚印LiDAR数据来模拟温带落叶林中的叶冠封闭的技术。我们评估了三种建模顶盖闭合的技术:(1)顶盖与总返回比例(CTRR),(2)顶盖与总像素比例(CTPR)和(3)半球-视域(HV)。第一种技术已经以各种形式广泛使用,并且已证明对叶上LiDAR数据集有效。我们测试的CTRR技术仅使用首次返回LiDAR数据。后两种技术是我们在本文中开发并提出的新技术。这些技术使用冠层高度模型(CHM)来检测森林冠层中的明显缝隙,这对于估算封闭度至关重要。我们测试的每种技术都显示出了良好的前景,即使用叶状LiDAR数据,CTPR和HV模型与半球照片的闭合估计值具有特别高的相关性,可以预测冠层闭合。 CTRR模型的性能与使用叶上LiDAR的先前研究结果相当,尽管使用叶下数据,该模型对于具有简单和复合叶类型的树种倾向于负偏向,而对于针叶树种则偏向正偏。 CTPR和HV模型还显示了复合叶物种的一些轻微的负偏差。当对CHM数据进行平滑处理以填补较小的空白时,可以缓解CTPR和HV模型的偏差。基于CHM的模型对CHM模型分辨率的变化具有鲁棒性,这表明这些方法可能适用于各种小尺寸LiDAR数据集。在这项研究中,新的CTPR和HV方法显示出使用叶数据预测冠层闭合的强大能力,但是,未来需要进行工作来测试模型对LiDAR数据集,森林类型和地形的变化的适用性。

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