Du Mingzhu, Wang Dawei, Liu Shengping, Lv Chunyang, Zhu Yeping
Agricultural Information Institute, Chinese Academy of Agricultural Sciences, Beijing, China.
Key Laboratory of Agricultural Blockchain Application, Ministry of Agriculture and Rural Affairs, Beijing, China.
Front Plant Sci. 2022 Dec 16;13:992789. doi: 10.3389/fpls.2022.992789. eCollection 2022.
Rodent outbreak is the main biological disaster in grassland ecosystems. Traditional rodent damage monitoring approaches mainly depend on costly field surveys, e.g., rodent trapping or hole counting. Integrating an unmanned aircraft system (UAS) image acquisition platform and deep learning (DL) provides a great opportunity to realize efficient large-scale rodent damage monitoring and early-stage diagnosis. As the major rodent species in Inner Mongolia, Brandt's voles (BV) () have markedly small holes, which are difficult to identify regarding various seasonal noises in this typical steppe ecosystem.
In this study, we proposed a novel UAS-DL-based framework for BV hole detection in two representative seasons. We also established the first bi-seasonal UAS image datasets for rodent hole detection. Three two-stage (Faster R-CNN, R-FCN, and Cascade R-CNN) and three one-stage (SSD, RetinaNet, and YOLOv4) object detection DL models were investigated from three perspectives: accuracy, running speed, and generalizability.
Experimental results revealed that: 1) Faster R-CNN and YOLOv4 are the most accurate models; 2) SSD and YOLOv4 are the fastest; 3) Faster R-CNN and YOLOv4 have the most consistent performance across two different seasons.
The integration of UAS and DL techniques was demonstrated to utilize automatic, accurate, and efficient BV hole detection in a typical steppe ecosystem. The proposed method has a great potential for large-scale multi-seasonal rodent damage monitoring.
鼠害爆发是草原生态系统中的主要生物灾害。传统的鼠害监测方法主要依赖成本高昂的实地调查,例如鼠夹诱捕或洞穴计数。将无人机系统(UAS)图像采集平台与深度学习(DL)相结合,为实现高效的大规模鼠害监测和早期诊断提供了绝佳机会。作为内蒙古的主要鼠种,布氏田鼠(BV)的洞穴明显较小,在这个典型的草原生态系统中,受各种季节性噪声影响,很难识别。
在本研究中,我们提出了一种基于无人机-深度学习的新颖框架,用于在两个代表性季节检测布氏田鼠洞穴。我们还建立了首个用于鼠洞检测的双季节无人机图像数据集。从准确性、运行速度和通用性三个角度,研究了三种两阶段(Faster R-CNN、R-FCN和Cascade R-CNN)和三种单阶段(SSD、RetinaNet和YOLOv4)目标检测深度学习模型。
实验结果表明:1)Faster R-CNN和YOLOv4是最准确的模型;2)SSD和YOLOv4运行速度最快;3)Faster R-CNN和YOLOv4在两个不同季节的性能最为一致。
无人机和深度学习技术的整合被证明可在典型草原生态系统中实现自动、准确且高效的布氏田鼠洞穴检测。所提出的方法在大规模多季节鼠害监测方面具有巨大潜力。