School of Agrifood and Forestry Science and Engineering, University of Lleida, Lleida, Spain.
Tecnosylva SL, Parque tecnológico León, León, Spain.
PLoS One. 2019 Mar 19;14(3):e0213027. doi: 10.1371/journal.pone.0213027. eCollection 2019.
Pine processionary moth (PPM) feeds on conifer foliage and periodically result in outbreaks leading to large scale defoliation, causing decreased tree growth, vitality and tree reproduction capacity. Multispectral high-resolution imagery acquired from a UAS platform was successfully used to assess pest tree damage at the tree level in a pine-oak mixed forest. We generated point clouds and multispectral orthomosaics from UAS through photogrammetric processes. These were used to automatically delineate individual tree crowns and calculate vegetation indices such as the normalized difference vegetation index (NDVI) and excess green index (ExG) to objectively quantify defoliation of trees previously identified. Overall, our research suggests that UAS imagery and its derived products enable robust estimation of tree crowns with acceptable accuracy and the assessment of tree defoliation by classifying trees along a gradient from completely defoliated to non-defoliated automatically with 81.8% overall accuracy. The promising results presented in this work should inspire further research and applications involving a combination of methods allowing the scaling up of the results on multispectral imagery by integrating satellite remote sensing information in the assessments over large spatial scales.
松毛虫以针叶为食,周期性地爆发,导致大规模的落叶,从而降低树木的生长、活力和繁殖能力。从无人机平台获取的多光谱高分辨率图像成功地用于评估松栎混交林中小规模树木的虫害损伤。我们通过摄影测量过程从无人机系统生成点云和多光谱正射影像。这些被用于自动描绘单个树冠并计算植被指数,如归一化差异植被指数(NDVI)和过绿指数(ExG),以客观地量化之前识别的树木的落叶情况。总的来说,我们的研究表明,无人机系统图像及其衍生产品能够以可接受的精度对树冠进行稳健估计,并通过对树木进行分类,自动对沿完全落叶到非落叶梯度的树木进行评估,从而评估树木的落叶情况,总体准确率为 81.8%。本工作中提出的有前景的结果应激发进一步的研究和应用,涉及结合多种方法,通过在大空间尺度上的评估中整合卫星遥感信息,对多光谱图像的结果进行扩展。