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LITIDA: a cost-effective non-parametric imputation approach to estimate LiDAR-detected tree diameters over a large heterogeneous area

机译:Litida:一种经济高效的非参数估算方法来估计LIDAR检测到的大型异构区域的树径

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摘要

The advent of light detection and ranging (LiDAR) technology has enabled accurate height measurements of individual trees; however, deriving tree diameters at breast height (DBH) from heights has proven challenging. Three issues exist: (1) reference errors caused by false data entries, incorrect measurements in the field, or the spatial mismatch of a LiDAR-detected tree to a field-measured tree, (2) general DBH underestimations for fully matured (FM)' trees with a saturating DBH-height relationship and (3) heterogeneity over expansive and diverse forested landscapes with corresponding variability in the DBH-height relationship. We addressed these three issues by developing the algorithm called LiDAR Individual Tree Imputed Diameter Algorithm (LITIDA). In LITIDA, the predictors include LiDAR-estimated tree height and plot-level climate, species composition, site index and competition stress. These predictors can be obtained without precise locations of measured trees; therefore, matching LiDAR-detected trees to field-measured trees is not necessary. For each individual LiDAR-detected tree, LITIDA is designed to select candidates from field-measured trees and adopt a weighted mean DBH to reduce the influence of outliers. Furthermore, larger DBHs are assigned to FM trees; therefore, DBH underestimation for FM trees can be mitigated. LITIDA is a non-parametric algorithm considering the biotic and abiotic variations that contribute to the complex DBH-height relationship; therefore, LITIDA can be applied over large and complex landscapes. The effectiveness of LITIDA was demonstrated on the Tahoe National Forest where 15 329 trees from 27 species over a 3526 km(2) area were measured in 544 plots. The DBH of more than 77 million trees were estimated. The 10-fold cross-validation resulted in root-mean-square error (RMSE), mean absolute error (MAE), and bias of 9.785 cm, 7.3 cm and -1.121 cm, with the relative error being 21.5 per cent, 16.1 per cent and -2.5 per cent, respectively. However, the actual accuracy for this demonstrative study was most likely higher because of reference data errors found in 30 of the 39 outliers in the reference tree database. We conclude that LITIDA is a cost-effective non-parametric imputation approach that can estimate LiDAR-detected tree diameters effectively over a large heterogeneous area.
机译:光检测和测距(LIDAR)技术的出现使得能够精确的各个树木的高度测量;然而,从高度的乳房高度(DBH)下导出树径已经证明了具有挑战性。存在三个问题:(1)由虚假数据条目引起的参考误差,字段中的错误测量值,或将LIDAR检测到的树的空间不匹配到现场测量的树,(2)完全成熟的一般DBH低估(FM) '具有饱和DBH高度关系的树木和(3)在膨胀和多样的森林景观中的异质性,具有DBH高度关系的相应变异性。我们通过开发称为LIDAR单根抵消算法(LITIDA)的算法来解决这三个问题。在Litida中,预测因子包括LIDAR估计的树高度和情节级气候,物种组成,现场指数和竞争应力。可以在没有测量树木的精确位置的情况下获得这些预测器;因此,不需要将激光雷达检测到的树匹配为现场测量的树。对于每个单独的激光雷达检测到的树,Litida旨在从现场测量的树上选择候选物,并采用加权平均dBH来减少异常值的影响。此外,将较大的DBHs分配给FM树;因此,可以减轻FM树的DBH低估。 Litida是一种非参数算法,考虑到有助于复杂的DBH高度关系的生物和非生物变化;因此,Litida可以应用于大而复杂的景观。在Tahoe国家森林上证明了Litida的有效性,其中529棵从3526公里(2)个面积超过3526公里(2)个区域的树木。估计超过7700万树的DBH。 10倍的交叉验证导致根均方误差(RMSE),平均值误差(MAE),偏置为9.785厘米,7.3cm和-1.121厘米,相对误差为21.5%,每分别和-2.5%。但是,由于参考树数据库中的39个异常值中的30个异常值中的30个,该演示研究的实际准确性最有可能更高。我们得出结论,LITIDA是一种经济高效的非参数避名方法,可以在大型异构区域上有效地估计激光雷达检测到的树径。

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  • 来源
    《Forestry》 |2019年第2期|共13页
  • 作者单位

    US Forest Serv USDA Pacific Southwest Reg Remote Sensing Lab 3237 Peacekeeper Way Suite 201 Mcclellan CA 95652 USA;

    US Forest Serv USDA Pacific Southwest Reg Remote Sensing Lab 3237 Peacekeeper Way Suite 201 Mcclellan CA 95652 USA;

    US Forest Serv USDA Pacific Southwest Reg Remote Sensing Lab 3237 Peacekeeper Way Suite 201 Mcclellan CA 95652 USA;

    US Forest Serv USDA Pacific Southwest Reg Remote Sensing Lab 3237 Peacekeeper Way Suite 201 Mcclellan CA 95652 USA;

    US Forest Serv USDA Tahoe Natl Forest 10811 Stockrest Springs Rd Truckee CA 96161 USA;

    US Forest Serv USDA Pacific Southwest Reg Remote Sensing Lab 3237 Peacekeeper Way Suite 201 Mcclellan CA 95652 USA;

    US Forest Serv USDA Pacific Southwest Reg Remote Sensing Lab 3237 Peacekeeper Way Suite 201 Mcclellan CA 95652 USA;

    US Forest Serv USDA Pacific Southwest Reg Remote Sensing Lab 3237 Peacekeeper Way Suite 201 Mcclellan CA 95652 USA;

    US Forest Serv USDA Pacific Southwest Reg Remote Sensing Lab 3237 Peacekeeper Way Suite 201 Mcclellan CA 95652 USA;

    Calif Air Resources Board 1001 I St Sacramento CA 95814 USA;

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  • 正文语种 eng
  • 中图分类 林业;
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