Jarahizadeh Sina, Salehi Bahram
State University of New York, College of Environmental Science and Forestry (SUNY ESF), Department of Environmental Resources Engineering, 1 Forestry Dr., Syracuse, NY 13210, USA.
Sensors (Basel). 2024 Jan 3;24(1):286. doi: 10.3390/s24010286.
Three-dimensional (3D) modeling of trees has many applications in various areas, such as forest and urban planning, forest health monitoring, and carbon sequestration, to name a few. Unmanned Aerial Vehicle (UAV) photogrammetry has recently emerged as a low cost, rapid, and accurate method for 3D modeling of urban and forest trees replacing the costly traditional methods such as plot measurements and surveying. There are numerous commercial and open-source software programs available, each processing UAV data differently to generate forest 3D modeling and photogrammetric products, including point clouds, Digital Surface Models (DSMs), Canopy Height Models (CHMs), and orthophotos in forest areas. The objective of this study is to compare the three widely-used commercial software packages, namely, AgiSoft Photoscan (Metashape) V 1.7.3, PIX4DMapper (Pix4D) V 4.4.12, and DJI Terra V 3.7.6 for processing UAV data over forest areas from three perspectives: point cloud density and reconstruction quality, computational time, DSM assessment for height accuracy (z) and ability of tree detection on DSM. Three datasets, captured by UAVs on the same day at three different flight altitudes, were used in this study. The first, second, and third datasets were collected at altitudes of 60 m, 100 m, and 120 m, respectively over a forested area in Tully, New York. While the first and third datasets were taken horizontally, the second dataset was taken 20 degrees off-nadir to investigate the impact of oblique images. Results show that Pix4D and AgiSoft generate 2.5 times denser point clouds than DJI Terra. However, reconstruction quality evaluation using the Iterative Closest Point method (ICP) shows DJI Terra has fewer gaps in the point cloud and performed better than AgiSoft and Pix4D in generating a point cloud of trees, power lines and poles despite producing a fewer number of points. In other words, the outperformance in key points detection and an improved matching algorithm are key factors in generating improved final products. The computational time comparison demonstrates that the processing time for AgiSoft and DJI Terra is roughly half that of Pix4D. Furthermore, DSM elevation profiles demonstrate that the estimated height variations between the three software range from 0.5 m to 2.5 m. DJI Terra's estimated heights are generally greater than those of AgiSoft and Pix4D. Furthermore, DJI Terra outperforms AgiSoft and Pix4D for modeling the height contour of trees, buildings, and power lines and poles, followed by AgiSoft and Pix4D. Finally, in terms of the ability of tree detection, DJI Terra outperforms AgiSoft and Pix4D in generating a comprehensive DSM as a result of fewer gaps in the point cloud. Consequently, it stands out as the preferred choice for tree detection applications. The results of this paper can help 3D model users to have confidence in the reliability of the generated 3D models by comprehending the accuracy of the employed software.
树木的三维(3D)建模在多个领域有诸多应用,比如森林与城市规划、森林健康监测以及碳固存等,仅举几例。无人机(UAV)摄影测量法近来已成为一种低成本、快速且准确的方法,用于城市和森林树木的3D建模,取代了诸如地块测量和勘测等成本高昂的传统方法。现有众多商业和开源软件程序,每个程序处理无人机数据的方式不同,以生成森林3D建模和摄影测量产品,包括点云、数字表面模型(DSM)、树冠高度模型(CHM)以及林区的正射影像。本研究的目的是从三个角度比较三种广泛使用的商业软件包,即AgiSoft Photoscan(Metashape)V 1.7.3、PIX4DMapper(Pix4D)V 4.4.12和DJI Terra V 3.7.6,用于处理林区的无人机数据:点云密度和重建质量、计算时间、DSM高度精度(z)评估以及DSM上树木检测能力。本研究使用了无人机在同一天于三个不同飞行高度采集的三个数据集。第一、第二和第三个数据集分别在纽约塔利的一个林区上空60米、100米和120米的高度采集。第一个和第三个数据集是水平拍摄的,而第二个数据集是从偏离天底20度的角度拍摄的,以研究倾斜图像的影响。结果表明,Pix4D和AgiSoft生成的点云密度比DJI Terra高2.5倍。然而,使用迭代最近点法(ICP)进行的重建质量评估表明,DJI Terra的点云间隙较少,尽管生成的点数较少,但在生成树木、输电线和电线杆的点云方面比AgiSoft和Pix4D表现更好。换句话说,在关键点检测方面的优势和改进的匹配算法是生成改进的最终产品的关键因素。计算时间比较表明,AgiSoft和DJI Terra的处理时间大约是Pix4D的一半。此外,DSM高程剖面图表明,这三款软件估计的高度变化范围在0.5米至2.5米之间。DJI Terra估计的高度通常高于AgiSoft和Pix4D。此外,在对树木、建筑物、输电线和电线杆的高度轮廓进行建模方面,DJI Terra优于AgiSoft和Pix4D,其次是AgiSoft和Pix4D。最后,在树木检测能力方面,由于点云间隙较少,DJI Terra在生成全面的DSM方面优于AgiSoft和Pix4D。因此,它成为树木检测应用的首选。本文的结果可以帮助3D模型用户通过了解所用软件的准确性,对生成的3D模型的可靠性充满信心。