利用激光雷达衍生的森林冠层间隙度量对森林物种进行建模

IF 0.3 Q4 REMOTE SENSING South African Journal of Geomatics Pub Date : 2020-02-27 DOI:10.4314/sajg.v9i1.3
L. Lombard, R. Ismail, Nitesh K. Poona
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引用次数: 0

摘要

据报道,激光雷达强度和纹理特征在区分森林物种方面具有很高的准确性,特别是随机森林(RF)算法的应用。迄今为止,有限的研究利用激光雷达获得的森林间隙信息来协助森林物种识别。本研究通过提取林冠间隙的激光雷达强度和纹理特征,对人工林内的大桉(Eucalyptus grandis)和敦桉(Eucalyptus dunnii)进行区分。此外,还提取了林冠间隙和林冠的激光雷达强度和纹理信息,并将其用于物种识别。同时提取林冠间隙和林冠的激光雷达强度和纹理信息,模型精度为94.74% (KHAT = 0.88)。仅利用冠层间隙信息,RF模型的总体精度为90.91% (KHAT = 0.81)。研究结果强调了利用林隙信息进行商业物种识别和定位的潜力。
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Modelling forest species using LiDar-derived metrics of forest canopy gaps
LiDAR intensity and texture features have reported high accuracies for discriminating forest species, particularly with the utility of the random forest (RF) algorithm. To date, limited studies has utilized LiDAR-derived forest gap information to assist in forest species discrimination. In this study, LiDAR intensity and texture features were extracted from forest canopy gaps to discriminate Eucalyptus grandis and Eucalyptus dunnii within a forest plantation. Additionally, LiDAR intensity and texture information was extracted for both canopy gaps and forest canopy and utilized for species discrimination. Using LiDAR intensity and texture information extracted for both canopy gap and forest canopy, resulted in a model accuracy of 94.74% (KHAT = 0.88). Using only canopy gap information, the RF model obtained an overall accuracy of 90.91% (KHAT = 0.81). The results highlight the potential for using canopy gap information for commercial species discrimination and mapping.
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