Forest canopy height modelling based on photogrammetric data and machine learning methods

Xingsheng Deng, Yujing Liu, Xingdong Cheng
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Abstract

Forest topographic survey is a problem that photogrammetry has not solved for a long time. Forest canopy height is a crucial forest biophysical parameter which is used to derive essential information about forest ecosystems. In order to construct a canopy height model in forest areas, this study extracts spectral feature factors from digital orthophoto map and geometric feature factors from digital surface model, which are generated through aerial photogrammetry and LiDAR (light detection and ranging). The maximum information coefficient, Pearson, Kendall, Spearman correlation coefficients, and a new proposed index of relative importance are employed to assess the correlation between each feature factor and forest vertical heights. Gradient boosting decision tree regression is introduced and utilised to construct a canopy height model, which enables the prediction of unknown canopy height in forest areas. Two additional machine learning techniques, namely random forest regression and support vector machine regression, are employed to construct canopy height model for comparative analysis. The data sets from two study areas have been processed for model training and prediction, yielding encouraging experimental results that demonstrate the potential of canopy height model to achieve prediction accuracies of 0.3 m in forested areas with 50% vegetation coverage and 0.8 m in areas with 99% vegetation coverage, even when only a mere 10% of the available data sets are selected as model training data. The above approaches present techniques for modelling canopy height in forested areas with varying conditions, which have been shown to be both feasible and reliable.
基于摄影测量数据和机器学习方法的林冠高度建模
森林地形测量是摄影测量学长期未能解决的问题。林冠高度是一个重要的森林生物物理参数,可用于获取森林生态系统的基本信息。为了构建林区冠层高度模型,本研究从数字正射影像图中提取光谱特征因子,从数字地表模型中提取几何特征因子。采用最大信息系数、Pearson、Kendall、Spearman 相关系数以及新提出的相对重要性指数来评估各特征因子与森林垂直高度之间的相关性。梯度提升决策树回归被引入并用于构建树冠高度模型,从而实现对林区未知树冠高度的预测。另外还采用了两种机器学习技术,即随机森林回归和支持向量机回归,来构建冠层高度模型,以便进行比较分析。对两个研究区域的数据集进行了模型训练和预测处理,取得了令人鼓舞的实验结果,证明了冠层高度模型在植被覆盖率为 50%的林区和植被覆盖率为 99%的林区分别达到 0.3 米和 0.8 米的预测精度,即使仅选择可用数据集的 10%作为模型训练数据。上述方法提出了在条件各异的林区建立树冠高度模型的技术,这些技术已被证明是可行和可靠的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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