Wu Wei, Liu Shengping, Zhong Xiaochun, Liu Xiaohui, Wang Dawei, Lin Kejian
Key Laboratory of Agricultural Blockchain Application, Ministry of Agriculture and Rural Affairs & Agricultural Information Institute, Chinese Academy of Agricultural Sciences, Beijing, China.
State Key Laboratory for Biology of Plant Diseases and Insect Pests, Institute of Plant Protection, Chinese Academy of Agricultural Sciences, Beijing, China.
Front Plant Sci. 2024 Mar 7;15:1290845. doi: 10.3389/fpls.2024.1290845. eCollection 2024.
Rodents are essential to the balance of the grassland ecosystem, but their population outbreak can cause major economic and ecological damage. Rodent monitoring is crucial for its scientific management, but traditional methods heavily depend on manual labor and are difficult to be carried out on a large scale. In this study, we used UAS to collect high-resolution RGB images of steppes in Inner Mongolia, China in the spring, and used various object detection algorithms to identify the holes of Brandt's vole (). Optimizing the model by adjusting evaluation metrics, specifically, replacing classification strategy metrics such as precision, recall, and F1 score with regression strategy-related metrics FPPI, MR, and MAPE to determine the optimal threshold parameters for IOU and confidence. Then, we mapped the distribution of vole holes in the study area using position data derived from the optimized model. Results showed that the best resolution of UAS acquisition was 0.4 cm pixel, and the improved labeling method improved the detection accuracy of the model. The FCOS model had the highest comprehensive evaluation, and an R of 0.9106, RMSE of 5.5909, and MAPE of 8.27%. The final accuracy of vole hole counting in the stitched orthophoto was 90.20%. Our work has demonstrated that UAS was able to accurately estimate the population of grassland rodents at an appropriate resolution. Given that the population distribution we focus on is important for a wide variety of species, our work illustrates a general remote sensing approach for mapping and monitoring rodent damage across broad landscapes for studies of grassland ecological balance, vegetation conservation, and land management.
啮齿动物对于草原生态系统的平衡至关重要,但其种群爆发会造成重大的经济和生态破坏。啮齿动物监测对于其科学管理至关重要,但传统方法严重依赖人工,难以大规模开展。在本研究中,我们使用无人机在春季采集了中国内蒙古草原的高分辨率RGB图像,并使用各种目标检测算法识别布氏田鼠的洞穴。通过调整评估指标来优化模型,具体而言,用与回归策略相关的指标FPPI、MR和MAPE取代诸如精度、召回率和F1分数等分类策略指标,以确定交并比(IOU)和置信度的最佳阈值参数。然后,我们利用优化模型得出的位置数据绘制了研究区域内田鼠洞穴的分布图。结果表明,无人机采集的最佳分辨率为0.4厘米/像素,改进后的标注方法提高了模型的检测精度。FCOS模型的综合评估最高,决定系数R为0.9106,均方根误差RMSE为5.5909,平均绝对百分比误差MAPE为8.27%。拼接正射影像图中田鼠洞穴计数的最终准确率为90.20%。我们的工作表明,无人机能够在适当分辨率下准确估计草原啮齿动物的种群数量。鉴于我们关注的种群分布对多种物种都很重要,我们的工作展示了一种通用的遥感方法,用于在广阔区域绘制和监测啮齿动物造成的破坏,以研究草原生态平衡、植被保护和土地管理。