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Mapping Forest Canopy Height over Continental China Using Multi-Source Remote Sensing Data

机译:利用多源遥感数据绘制中国大陆森林冠层高度

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Spatially-detailed forest height data are useful to monitor local, regional and global carbon cycle. LiDAR remote sensing can measure three-dimensional forest features but generating spatially-contiguous forest height maps at a large scale (e.g., continental and global) is problematic because existing LiDAR instruments are still data-limited and expensive. This paper proposes a new approach based on an artificial neural network (ANN) for modeling of forest canopy heights over the China continent. Our model ingests spaceborne LiDAR metrics and multiple geospatial predictors including climatic variables (temperature and precipitation), forest type, tree cover percent and land surface reflectance. The spaceborne LiDAR instrument used in the study is the Geoscience Laser Altimeter System (GLAS), which can provide within-footprint forest canopy heights. The ANN was trained with pairs between spatially discrete LiDAR metrics and full gridded geo-predictors. This generates valid conjugations to predict heights over the China continent. The ANN modeled heights were evaluated with three different reference data. First, field measured tree heights from three experiment sites were used to validate the ANN model predictions. The observed tree heights at the site-scale agreed well with the modeled forest heights (R = 0.827, and RMSE = 4.15 m). Second, spatially discrete GLAS observations and a continuous map from the interpolation of GLAS-derived tree heights were separately used to evaluate the ANN model. We obtained R of 0.725 and RMSE of 7.86 m and R of 0.759 and RMSE of 8.85 m, respectively. Further, inter-comparisons were also performed with two existing forest height maps. Our model granted a moderate agreement with the existing satellite-based forest height maps (R = 0.738, and RMSE = 7.65 m (R2 = 0.52, and RMSE = 8.99 m). Our results showed that the ANN model developed in this paper is capable of estimating forest heights over the China continent with a satisfactory accuracy. Forth coming research on our model will focus on extending the model to the estimation of woody biomass.
机译:空间详细的森林高度数据可用于监视本地,区域和全球碳循环。 LiDAR遥感可以测量3维森林特征,但是由于现有的LiDAR仪器仍然受数据限制且价格昂贵,因此大规模(例如大陆和全球)生成空间连续的森林高度图是有问题的。本文提出了一种基于人工神经网络(ANN)的中国大陆森林冠层高度建模的新方法。我们的模型吸收了星载LiDAR指标和多种地理空间预测指标,包括气候变量(温度和降水),森林类型,树木覆盖率和地面反射率。这项研究中使用的星载LiDAR仪器是地球科学激光测高仪系统(GLAS),它可以提供森林内树冠高度的足迹。对ANN进行了空间离散LiDAR度量与完整网格化地理预测器之间的配对训练。这会产生有效的共轭来预测中国大陆的高度。用三个不同的参考数据评估了ANN建模的高度。首先,使用来自三个实验地点的现场测得的树高来验证ANN模型的预测。在现场尺度上观察到的树木高度与模型森林高度(R = 0.827,RMSE = 4.15 m)非常吻合。其次,分别使用空间离散的GLAS观测值和来自GLAS的树高的插值得到的连续图来评估ANN模型。我们获得的R为0.725,RMSE为7.86 m,R的0.759和RMSE为8.85 m。此外,还利用两个现有的森林高度图进行了比较。我们的模型与现有的基于卫星的森林高度图(R = 0.738,RMSE = 7.65 m(R 2 = 0.52,RMSE = 8.99 m)达成了适度的协议。本文开发的神经网络模型能够以令人满意的精度估算中国大陆的森林高度,今后我们对该模型的研究将集中在扩展该模型以估计木质生物量上。

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