Ji Yu, Yan Enping, Yin Xianming, Song Yabin, Wei Wei, Mo Dengkui
Key Laboratory of Forestry Remote Sensing Based Big Data and Ecological Security for Hunan Province, Changsha, China.
Key Laboratory of State Forestry and Grassland Administration on Forest Resources Management and Monitoring in Southern Area, Changsha, China.
Front Plant Sci. 2022 Aug 11;13:958940. doi: 10.3389/fpls.2022.958940. eCollection 2022.
As one of the four most important woody oil-tree in the world, has significant economic value. Rapid and accurate acquisition of tree-crown information is essential for enhancing the effectiveness of tree management and accurately predicting fruit yield. This study is the first of its kind to explore training the ResU-Net model with UAV (unmanned aerial vehicle) images containing elevation information for automatically detecting tree crowns and estimating crown width (CW) and crown projection area (CPA) to rapidly extract tree-crown information. A Phantom 4 RTK UAV was utilized to acquire high-resolution images of the research site. Using UAV imagery, the tree crown was manually delineated. ResU-Net model's training dataset was compiled using six distinct band combinations of UAV imagery containing elevation information [RGB (red, green, and blue), RGB-CHM (canopy height model), RGB-DSM (digital surface model), EXG (excess green index), EXG-CHM, and EXG-DSM]. As a test set, images with UAV-based CW and CPA reference values were used to assess model performance. With the RGB-CHM combination, ResU-Net achieved superior performance. Individual tree-crown detection was remarkably accurate (Precision = 88.73%, Recall = 80.43%, and F1score = 84.68%). The estimated CW ( = 0.9271, RMSE = 0.1282 m, rRMSE = 6.47%) and CPA ( = 0.9498, RMSE = 0.2675 m, rRMSE = 9.39%) values were highly correlated with the UAV-based reference values. The results demonstrate that the input image containing a CHM achieves more accurate crown delineation than an image containing a DSM. The accuracy and efficacy of ResU-Net in extracting tree-crown information have great potential for application in non-wood forests precision management.
作为世界上四大重要木本油料树种之一,具有重要的经济价值。快速准确地获取树冠信息对于提高树木管理效率和准确预测果实产量至关重要。本研究首次探索使用包含高程信息的无人机(无人驾驶飞机)图像训练ResU-Net模型,以自动检测树冠并估计树冠宽度(CW)和树冠投影面积(CPA),从而快速提取树冠信息。使用Phantom 4 RTK无人机获取研究地点的高分辨率图像。利用无人机图像,人工勾勒出树冠。ResU-Net模型的训练数据集是使用包含高程信息的无人机图像的六种不同波段组合编制而成的[RGB(红、绿、蓝)、RGB-CHM(树冠高度模型)、RGB-DSM(数字表面模型)、EXG(过量绿色指数)、EXG-CHM和EXG-DSM]。作为测试集,使用具有基于无人机的CW和CPA参考值的图像来评估模型性能。使用RGB-CHM组合时,ResU-Net表现出卓越的性能。单个树冠检测非常准确(精度=88.73%,召回率=80.43%,F1分数=84.68%)。估计的CW(=0.9271,RMSE=0.1282米,rRMSE=6.47%)和CPA(=0.9498,RMSE=0.2675米)值与基于无人机的参考值高度相关rRMSE=9.39%)。结果表明,包含CHM的输入图像比包含DSM的图像能实现更准确的树冠勾勒。ResU-Net在提取树冠信息方面的准确性和有效性在非木材森林精准管理中具有巨大的应用潜力。