首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Estimating forest stand density and structure using Bayesian individual tree detection, stochastic geometry, and distribution matching
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Estimating forest stand density and structure using Bayesian individual tree detection, stochastic geometry, and distribution matching

机译:使用贝叶斯个体树检测,随机几何和分布匹配来估计林分密度和结构

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摘要

Errors in individual tree detection and delineation affect diameter distribution predictions based on crown attributes extracted from the detected trees. We develop a methodology for circumventing these problems. The method is based on matching cumulative distribution functions of field measured tree diameter distributions and crown radii distributions extracted from airborne laser scanning data through individual tree detection presented by Vauhkonen and Mehtatalo (2015). In this study, empirical distribution functions and a monotonic, nonlinear model curve are introduced. Tree crown radius distribution produced by individual tree detection is corrected by a method taking into account that all trees cannot be detected. The evaluation is based on the ability of the developed model sequence to predict quadratic mean diameter and total basal area. The studied data consists of 36 field plots in a typical boreal managed forest area in eastern Finland. The suggested enhancements to the model sequence produce improved results in most of the test cases. Most notably, in leaveone-out cross-validation experiments the modified models improve RMSE of basal area 13% in the full data and RMSE of quadratic mean diameter and basal area 69% and 11%, respectively, in pure pine plots. Better modeling of the crown radius distribution and improved matching between crown radii and stem diameters add the operational premises of the full distribution matching.
机译:个别树木检测和描绘中的错误会基于从检测到的树木中提取的树冠属性影响直径分布预测。我们开发了一种避免这些问题的方法。该方法基于Vauhkonen和Mehtatalo(2015)提出的通过个体树检测从机载激光扫描数据中提取的实地测得的树木直径分布和冠状半径分布的累积分布函数匹配。在这项研究中,引入了经验分布函数和单调非线性模型曲线。通过考虑不能检测到所有树木的方法来校正由单个树木检测产生的树冠半径分布。评估基于已开发的模型序列预测二次平均直径和总基础面积的能力。研究数据包括芬兰东部典型的北方管理林区的36个田地。在大多数测试案例中,建议的对模型序列的增强会产生更好的结果。最值得注意的是,在无遗留交叉验证实验中,改良模型在完整数据中将基础数据的RMSE提高了13%,在纯松积图中,二次平均直径的RMSE和基础面积的RMSE分别提高了69%和11%。更好地建模冠部半径分布,并改善冠部半径和杆直径之间的匹配度,这为完全分布匹配增加了操作前提。

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