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The red-haired pine bark beetle, Hylurgus ligniperda Fabricius, is an internationally significant forest quarantine pest that poses a threat to coniferous trees in the coastal areas of Shandong, China. Monitoring its infestation is crucial in forest pest management, allowing for timely detection, early intervention, and prevention of further spread. Conventional manual identification methods are insufficient for modern surveillance of the H. ligniperda . To address this challenge, an improved YOLOv7 deep learning model is applied for identification. The aim is to automate, efficiently, and accurately identify and quantify the small, densely distributed, and variably posed H. ligniperda in the natural environment. The original backbone feature extraction network in YOLOv7 was replaced with the more lightweight and efficient EfficientNet Version 2 Small (EfficientNetV2-S) network to achieve model lightweighting while balancing speed and accuracy. Focal Loss was utilized as a loss function to mitigate the impact of class imbalance, balancing the ratio of positive and negative samples, thereby enhancing identification precision. Training on a dataset composed of pest images captured within traps demonstrated that the improved YOLOv7 achieved an impressive mean average precision (mAP) of 82.5%, a 4.4% improvement over the original YOLOv7. Comparative experiments with other models indicated superior performance of this enhanced model in the practical detection of H. ligniperda. This offers a viable solution for the precise identification of small pests and presents a practical application value for pest monitoring and early warning systems.
Li et al. (Tue,) studied this question.
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