首页> 外文期刊>International journal of applied earth observation and geoinformation >The use of fixed-wing UAV photogrammetry with LiDAR DTM to estimate merchantable volume and carbon stock in living biomass over a mixed conifer-broadleaf forest
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The use of fixed-wing UAV photogrammetry with LiDAR DTM to estimate merchantable volume and carbon stock in living biomass over a mixed conifer-broadleaf forest

机译:用LIDAR DTM使用固定翼UAV摄影措施在混合针叶树 - 阔叶林上估算活生物量的商用体积和碳储备

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Remote sensing (RS) data are often used as a complementary data source to acquire accurate quantitative estimations of merchantable volume (V) and carbon stock in living biomass (CST), which are critical for the sustainable use of forest resources. In this study, we investigated the utility of unmanned aerial vehicles (UAVs) and the structure from motion (SfM) technique for estimating and mapping the spatial distributions of V and CST of an uneven-aged mixed conifer-broadleaf forest that had experienced major disturbances (e.g., wind damage and selection harvesting) over time. In addition to the commonly used RS structural metrics, we also calculated an image metric (broadleaf vegetation cover percentage) using a UAV-SfM orthomosaic to use as an explanatory variable. Plot level validation of UAV-SfM-estimated V revealed a root mean square error (RMSE) of 39.8 m(3) ha(-1) and a relative RMSE of 16.7%, whereas the RMSE and relative RMSE vales for UAV-SfM-estimated CST were 14.3 Mg C ha(-1) and 17.4% respectively. Our image metric had a statistically significant association with V and CST, providing additional explanatory power in the regression analysis. Nevertheless, RMSE values did not significantly change after adding the image metric into the regression analysis, e.g., %RMSE was reduced by 1.9% for V estimation, and 1.5% for CST estimation. Furthermore, the UAV-SfM estimates we obtained were comparable to light detection and ranging (LiDAR) estimates (relative RMSE of 16.4% and 16.7% for V and CST, respectively). We also successfully mapped the spatial distributions of V and CST and identified their stand- and landscape-level variations. Therefore, we confirmed the potential of UAV imagery when combined with LiDAR digital terrain model to capture the fine scale spatial variation of V and CST in uneven-aged forests subjected to silvicultural practices and natural disturbances over time.
机译:遥感(RS)数据通常用作互补数据源,以获得精确的生物量(CST)的商品体积(v)和碳储量的准确定量估计,这对于可持续利用森林资源至关重要。在这项研究中,我们调查了无人驾驶飞行器(无人机)的效用和来自运动(SFM)技术的结构,用于估算和绘制不均匀的混合针叶树 - 阔叶林的V和CST的空间分布,这些植物经历了主要干扰(例如,风损坏和选择收获)随着时间的推移。除了常用的RS结构度量之外,我们还使用UAV-SFM正交核糖作为解释性变量计算图像度量(阔叶植被覆盖百分比)。绘图级别验证UAV-SFM估计的V显示出39.8米(3)HA(-1)的根均线误差(RMSE)和16.7%的相对RMSE,而UAV-SFM的RMSE和相对RMSE vales估计的CST分别为14.3mg C HA(-1)和17.4%。我们的图像指标与V和CST有统计学相关联,在回归分析中提供了额外的解释性。然而,在将图像度量添加到回归分析中,RMSE值没有显着改变,例如,对于V估计,%RMSE减少1.9%,CST估计为1.5%。此外,我们获得的UAV-SFM估计与光检测和测距(LIDAR)估计(相对RMSE分别为16.4%和16.7%,v和CST)。我们还成功映射了V和CST的空间分布,并确定了它们的立场和景观级别变化。因此,我们确认了UAV Imagerery的潜力与激光雷达数字地形模型结合,以捕获v和CST在不均匀的森林中,随着时间的推移而受到造林造林和自然紊乱的不均匀森林。

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