Hong Suk-Ju, Nam Il, Kim Sang-Yeon, Kim Eungchan, Lee Chang-Hyup, Ahn Sebeom, Park Il-Kwon, Kim Ghiseok
Department of Biosystems Engineering, College of Agriculture and Life Sciences, Seoul National University, 1 Gwanak-ro, Gwanak-gu, Seoul 08826, Korea.
Department of Agriculture, Forestry and Bioresources, College of Agriculture and Life Sciences, Seoul National University, Seoul 08826, Korea.
Insects. 2021 Apr 12;12(4):342. doi: 10.3390/insects12040342.
The black pine bast scale, , is a major insect pest of black pine and causes serious environmental and economic losses in forests. Therefore, it is essential to monitor the occurrence and population of , and a monitoring method using a pheromone trap is commonly employed. Because the counting of insects performed by humans in these pheromone traps is labor intensive and time consuming, this study proposes automated deep learning counting algorithms using pheromone trap images. The pheromone traps collected in the field were photographed in the laboratory, and the images were used for training, validation, and testing of the detection models. In addition, the image cropping method was applied for the successful detection of small objects in the image, considering the small size of in trap images. The detection and counting performance were evaluated and compared for a total of 16 models under eight model conditions and two cropping conditions, and a counting accuracy of 95% or more was shown in most models. This result shows that the artificial intelligence-based pest counting method proposed in this study is suitable for constant and accurate monitoring of insect pests.
黑松球蚜是黑松的主要害虫,给森林造成严重的环境和经济损失。因此,监测黑松球蚜的发生情况和种群数量至关重要,常用性诱捕器进行监测。由于人工在这些性诱捕器中计数昆虫既费力又耗时,本研究提出了利用性诱捕器图像的自动化深度学习计数算法。在实验室对野外收集的性诱捕器进行拍照,这些图像用于检测模型的训练、验证和测试。此外,考虑到诱捕器图像中黑松球蚜的尺寸较小,采用图像裁剪方法成功检测图像中的小目标。在八种模型条件和两种裁剪条件下,对总共16个模型的检测和计数性能进行了评估和比较,大多数模型的计数准确率达到95%以上。这一结果表明,本研究提出的基于人工智能的害虫计数方法适用于对害虫进行持续、准确的监测。