Natural Environmental Systems and Technologies (NEST) Research Group, Ecolife Sciences Research and Consultation, Hawally, Kuwait.
Department of Ecosystem Science and Management, Texas A&M University, College Station, TX, 77843, USA.
Environ Monit Assess. 2020 May 23;192(6):389. doi: 10.1007/s10661-020-08330-1.
Restoration programs require long-term monitoring and assessment of vegetation growth and productivity. Remote sensing technology is considered to be one of the most powerful technologies for assessing vegetation. However, several limitations have been observed with regard to the use of satellite imagery, especially in drylands, due to the special structure of desert plants. Therefore, this study was conducted in Kuwait's Al Abdali protected area, which is dominated by a Rhanterium epapposum community. This work aimed to determine whether Unmanned Aerial Vehicle (UAV) multispectral imagery could eliminate the challenges associated with satellite imagery by examining the vegetation indices and classification methods for very high multispectral resolution imagery using UAVs. The results showed that the transformed difference vegetation index (TDVI) performed better with arid shrubs and grasses than did the normalized difference vegetation index (NDVI). It was found that the NDVI underestimated the vegetation coverage, especially in locations with high vegetation coverage. It was also found that Support Vector Machine (SVM) and Maximum Likelihood (ML) classifiers demonstrated a higher accuracy, with a significant overall accuracy of 93% and a kappa coefficient of 0.89. Therefore, we concluded that SVM and ML are the best classifiers for assessing desert vegetation and the use of UAVs with multispectral sensors can eliminate some of the major limitations associated with satellite imagery, particularly when dealing with tiny plants such as native desert vegetation. We also believe that these methods are suitable for the purpose of assessing vegetation coverage to support revegetation and restoration programs.
恢复计划需要对植被生长和生产力进行长期监测和评估。遥感技术被认为是评估植被最有力的技术之一。然而,由于沙漠植物的特殊结构,在使用卫星图像时,尤其是在干旱地区,已经观察到了一些限制。因此,本研究在科威特的 Al Abdali 保护区进行,该保护区以 Rhanterium epapposum 群落为主。这项工作旨在确定无人机多光谱图像是否可以通过检查使用无人机的非常高分辨率多光谱图像的植被指数和分类方法来消除与卫星图像相关的挑战。结果表明,转换后的差异植被指数 (TDVI) 比归一化差异植被指数 (NDVI) 更适合干旱灌木和草类。研究发现,NDVI 低估了植被覆盖率,特别是在植被覆盖率高的地方。还发现支持向量机 (SVM) 和最大似然 (ML) 分类器具有更高的准确性,总体准确性为 93%,kappa 系数为 0.89。因此,我们得出结论,SVM 和 ML 是评估沙漠植被的最佳分类器,使用具有多光谱传感器的无人机可以消除与卫星图像相关的一些主要限制,特别是在处理像本地沙漠植被这样的小型植物时。我们还认为,这些方法适合评估植被覆盖度,以支持植被恢复和恢复计划。