The Key Laboratory of Forest Pest Control, College of Forestry, Beijing Forestry University, Beijing, China.
College of Information, Beijing Forestry University, Beijing, China.
Pest Manag Sci. 2024 Sep;80(9):4223-4230. doi: 10.1002/ps.8126. Epub 2024 May 27.
Hylurgus ligniperda, an invasive species originating from Eurasia, is now a major forestry quarantine pest worldwide. In recent years, it has caused significant damage in China. While traps have been effective in monitoring and controlling pests, manual inspections are labor-intensive and require expertise in insect classification. To address this, we applied a two-stage cascade convolutional neural network, YOLOX-MobileNetV2 (YOLOX-Mnet), for identifying H. ligniperda and other pests captured in traps. This method streamlines target and non-target insect detection from trap images, offering a more efficient alternative to manual inspections.
Two cascade convolutional neural network models were employed in two stages to detect both target and non-target insects from images captured in the same forest. Initially, You Only Look Once X (YOLOX) served as the target detection model, identifying insects and non-insects from the collected images, with non-insect targets subsequently filtered out. In the second stage, MobileNetV2, a classification network, classified the captured insects. This approach effectively reduced false positives from non-insect objects, enabled the inclusion of additional classification terms for multi-class insect classification models, and utilized sample control strategies to enhance classification performance.
Application of the cascade convolutional neural network model accurately identified H. ligniperda, and Mean F-score of all kinds of insects in the trap was 0.98. Compared to traditional insect classification, this method offers great improvement in the identification and early warning of forest pests, as well as provide technical support for the early prevention and control of forest pests. © 2024 Society of Chemical Industry.
光肩星天牛原产于欧亚大陆,现已成为全球主要的林业检疫害虫。近年来,它在中国造成了严重的破坏。虽然诱捕器在监测和控制害虫方面非常有效,但人工检查需要专业的昆虫分类知识,且劳动强度大。为了解决这个问题,我们应用了两级级联卷积神经网络 YOLOX-MobileNetV2(YOLOX-Mnet)来识别诱捕器中捕获的光肩星天牛和其他害虫。这种方法简化了从诱捕器图像中检测目标和非目标昆虫的过程,为人工检查提供了更高效的替代方法。
我们在两个阶段使用了两个级联卷积神经网络模型来检测同一林区诱捕器拍摄图像中的目标和非目标昆虫。首先,使用了 You Only Look Once X(YOLOX)作为目标检测模型,从采集的图像中识别昆虫和非昆虫目标,然后过滤掉非昆虫目标。在第二阶段,使用 MobileNetV2 分类网络对捕获的昆虫进行分类。这种方法有效地减少了非昆虫目标的误报,为多类昆虫分类模型增加了其他分类项,并利用样本控制策略提高了分类性能。
级联卷积神经网络模型的应用可以准确识别光肩星天牛,诱捕器中所有种类昆虫的平均 F1 分数为 0.98。与传统的昆虫分类方法相比,该方法在森林害虫的识别和预警方面有了很大的改进,为森林害虫的早期预防和控制提供了技术支持。