Estimating the performance of multi-rotor unmanned aerial vehicle structure-from-motion (UAVsfm) imagery in assessing homogeneous and heterogeneous forest structures: a comparison to airborne and terrestrial laser scanning

IF 0.3 Q4 REMOTE SENSING South African Journal of Geomatics Pub Date : 2022-09-04 DOI:10.4314/sajg.v11i1.6
Kenechukwu C. Onwudinjo, J. Smit
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引用次数: 2

Abstract

The implementation of Unmanned Aerial Vehicles (UAVs) and Structure-from-Motion (SfM) photogrammetry in assessing forest structures for forest inventory and biomass estimations has shown great promise in reducing costs and labour intensity while providing relative accuracy. Tree Height (TH) and Diameter at Breast Height (DBH) are two major variables in biomass assessment. UAV-based TH estimations depend on reliable Digital Terrain Models (DTMs), while UAV-based DBH estimations depend on reliable dense photogrammetric point cloud. The main aim of this study was to evaluate the performance of multi-rotor UAV photogrammetric point cloud in estimating homogeneous and heterogeneous forest structures, and their comparison to more accurate LiDAR data obtained from Aerial Laser Scanners (ALS), Terrestrial Laser Scanners (TLS), and more conventional means like manual field measurements. TH was assessed using UAVSfM and LiDAR point cloud derived DTMs, while DBH was assessed by comparing UAVSfM photogrammetric point cloud to LiDAR point cloud, as well as to manual measurements. The results obtained in the study indicated that there was a high correlation between UAVSfM TH and ALSLiDAR TH (R2 = 0.9258) for homogeneous forest structures, while a lower correlation between UAVSfM TH and TLSLiDAR TH (R2 = 0.8614) and UAVSfM TH and ALSLiDAR TH (R2 = 0.8850) was achieved for heterogeneous forest structures. A moderate correlation was obtained between UAVSfM DBH and field measurements (R2 = 0.5955) for homogenous forest structures, as well as between UAVSfM DBH and TLSLiDAR DBH (R2 = 0.5237), but a low correlation between UAVSfM DBH and UAVLiDAR DBH (R2 = 0.1114). The study demonstrated that UAV acquired imagery can be used to accurately estimate TH in both forest types, but has challenges estimating DBH. The research does not suggest that UAVSfM serves as a replacement for more high-cost and accurate LiDAR data, but rather as a cheaper adequate alternative in forestry management depending on accuracy requirements.
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从运动图像评估多旋翼无人机结构在评估均质和异质森林结构方面的性能:与机载和地面激光扫描的比较
无人机和运动结构摄影测量在评估森林结构以进行森林清查和生物量估计方面的应用,在降低成本和劳动强度的同时提供相对准确度方面显示出了巨大的前景。树高(TH)和胸径(DBH)是生物量评估的两个主要变量。基于无人机的TH估计依赖于可靠的数字地形模型(DTM),而无人机的DBH估计取决于可靠的密集摄影测量点云。本研究的主要目的是评估多旋翼无人机摄影测量点云在估计同质和异质森林结构方面的性能,并将其与从航空激光扫描仪(ALS)、地面激光扫描仪(TLS)和手动实地测量等更传统的方法获得的更准确的激光雷达数据进行比较。TH是使用UAVSfM和激光雷达点云衍生的DTM进行评估的,而DBH是通过将UAVSfM摄影测量点云与激光雷达点云和手动测量进行比较来评估的。研究结果表明,对于均质森林结构,无人机飞行时间和ALSLiDAR飞行时间之间的相关性很高(R2=0.9558),而对于异质森林结构,则无人机飞行频率和ALSLiDAR-TH之间的相关性较低(R2=0.8614),无人机飞射时间和ALSLiDAR-TH(R2=0.850)。对于同质森林结构,无人机垂直飞行模式DBH与实地测量值之间的相关性中等(R2=0.595),以及无人机垂直飞模式DBH和TLSLiDAR DBH之间的相关性较小(R2=0.5237),但无人机垂直飞航模式DBH同无人机超视距雷达DBH之间相关性较低(R2=0.1144)。研究表明,无人机获取的图像可用于准确估计两种森林类型的TH,但是在估计DBH方面存在挑战。这项研究并没有表明无人机飞行系统可以取代成本更高、更准确的激光雷达数据,而是根据精度要求,在林业管理中作为一种更便宜、足够的替代方案。
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