M. Maesano, G. Santopuoli, FV Moresi, G. Matteucci, B. Lasserre, G. Scarascia Mugnozza
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引用次数: 2
摘要
森林生物量知识是以可持续方式管理森林的一个重要参数,因为森林生物量数据的可用性和可靠性对于林业和森林规划至关重要,而且对于碳市场以及支持山区和内陆地区的当地经济也是必不可少的。然而,准确量化地上生物量(AGB)在地方和全球层面仍然是一个挑战。在无人机平台上使用遥感技术可以在AGB估计的分辨率、尺度和频率数据之间进行很好的权衡。在这项研究中,我们评估了无人机RGB图像、激光雷达数据和地面真实数据的组合使用,以估计意大利南部森林流域的AGB。采用搭载RGB相机的商用固定翼无人机,结合激光雷达获取的冠层信息,采用低成本的AGB估计方法,并通过现场数据进行验证。采用逐步回归(SR)和随机森林(RF)两种建模方法估算森林AGB。输出是每个模型的AGB的精确地图。RF模型比Steplm模型精度更高,r2由0.81提高到0.86,RMSE和MAE分别由45.5和31.7 Mg ha -1和34.2降低到22.1 Mg ha -1。我们证明,通过机器学习算法提高计算效率,可以使用现成的图像获得令人满意的结果,正如随机森林以上生物量估计模型的准确性所证明的那样。
Above ground biomass estimation from UAV high resolution RGB images and LiDAR data in a pine forest in Southern Italy
Knowledge of forest biomass is an essential parameter for managing the forest in a sustainable way, as forest biomass data availability and reliability are nec-essary for forestry and forest planning, but also for the carbon market as well as to support the local economy in the mountain and inner areas. However, the accurate quantification of the above-ground biomass (AGB) is still a chal-lenge both at the local and global levels. The use of remote sensing techniques with Unmanned Aerial Vehicle (UAV) platforms can be an excellent trade-off between resolution, scale, and frequency data of AGB estimation. In this study, we evaluated the combined use of RGB images from UAV, LiDAR data and ground truth data to estimate AGB in a forested watershed in Southern Italy. A low-cost AGB estimation method was adopted using a commercial fixed-wing drone equipped with an RGB camera, combined with the canopy information derived by LiDAR and validated by field data. Two modelling methods (stepwise regression, SR and random forest, RF) were used to estimate forest AGB. The output was an accurate maps of AGB for each model. The RF model showed better accuracy than the Steplm model, and the R 2 increased from 0.81 to 0.86, and the RMSE and MAE values were decreased from 45.5 to 31.7 Mg ha -1 and from 34.2 to 22.1 Mg ha -1 respectively. We demonstrated that by increas-ing the computing efficiency through a machine learning algorithm, readily available images can be used to obtain satisfactory results, as proven by the accuracy of the Random forest above biomass estimation model.
期刊介绍:
The journal encompasses a broad range of research aspects concerning forest science: forest ecology, biodiversity/genetics and ecophysiology, silviculture, forest inventory and planning, forest protection and monitoring, forest harvesting, landscape ecology, forest history, wood technology.