Sandino Juan, Gonzalez Felipe, Mengersen Kerrie, Gaston Kevin J
Institute for Future Environments; Robotics and Autonomous Systems, Queensland University ofTechnology (QUT), 2 George St, Brisbane City QLD 4000, Australia.
School of Mathematical Sciences; ARC Centre of Excellence for Mathematical & Statistical Frontiers(ACEMS), Queensland University of Technology (QUT), 2 George St, Brisbane City QLD 4000, Australia.
Sensors (Basel). 2018 Feb 16;18(2):605. doi: 10.3390/s18020605.
The monitoring of invasive grasses and vegetation in remote areas is challenging, costly, and on the ground sometimes dangerous. Satellite and manned aircraft surveys can assist but their use may be limited due to the ground sampling resolution or cloud cover. Straightforward and accurate surveillance methods are needed to quantify rates of grass invasion, offer appropriate vegetation tracking reports, and apply optimal control methods. This paper presents a pipeline process to detect and generate a pixel-wise segmentation of invasive grasses, using buffel grass (Cenchrus ciliaris) and spinifex (Triodia sp.) as examples. The process integrates unmanned aerial vehicles (UAVs) also commonly known as drones, high-resolution red, green, blue colour model (RGB) cameras, and a data processing approach based on machine learning algorithms. The methods are illustrated with data acquired in Cape Range National Park, Western Australia (WA), Australia, orthorectified in Agisoft Photoscan Pro, and processed in Python programming language, scikit-learn, and eXtreme Gradient Boosting (XGBoost) libraries. In total, 342,626 samples were extracted from the obtained data set and labelled into six classes. Segmentation results provided an individual detection rate of 97% for buffel grass and 96% for spinifex, with a global multiclass pixel-wise detection rate of 97%. Obtained results were robust against illumination changes, object rotation, occlusion, background cluttering, and floral density variation.
对偏远地区的入侵性草本植物和植被进行监测具有挑战性、成本高昂,且在实地有时还很危险。卫星和载人飞机勘测可以提供协助,但由于地面采样分辨率或云层覆盖的原因,其用途可能会受到限制。需要简单且准确的监测方法来量化草本植物的入侵速率、提供适当的植被跟踪报告,并应用最佳控制方法。本文提出了一种流程,以水牛草(Cenchrus ciliaris)和三齿稃草(Triodia sp.)为例,检测并生成入侵性草本植物的逐像素分割结果。该流程整合了通常被称为无人机的无人驾驶飞行器(UAV)、高分辨率红、绿、蓝颜色模型(RGB)相机,以及一种基于机器学习算法的数据处理方法。文中通过在澳大利亚西澳大利亚州(WA)的兰杰角国家公园采集的数据对这些方法进行了说明,这些数据在Agisoft Photoscan Pro中进行了正射校正,并使用Python编程语言、scikit-learn和极端梯度提升(XGBoost)库进行了处理。总共从获得的数据集中提取了342,626个样本,并将其标记为六个类别。分割结果显示,水牛草的个体检测率为97%,三齿稃草为96%,全局多类别逐像素检测率为97%。所得结果对于光照变化、物体旋转、遮挡、背景杂乱和花卉密度变化具有鲁棒性。