Affiliation:
1. College of Electronic Engineering (College of Artificial Intelligence), South China Agricultural University, Guangzhou 510642, China
2. College of Engineering, South China Agricultural University, Guangzhou 510642, China
Abstract
Due to the challenges of pest detection in complex environments, this research introduces a lightweight network for tobacco pest identification leveraging enhancements in YOLOv8 technology. Using YOLOv8 large (YOLOv8l) as the base, the neck layer of the original network is replaced with an asymptotic feature pyramid network (AFPN) network to reduce model parameters. A SimAM attention mechanism, which does not require additional parameters, is incorporated to improve the model’s ability to extract features. The backbone network’s C2f model is replaced with the VoV-GSCSP module to reduce the model’s computational requirements. Experiments show the improved YOLOv8 model achieves high overall performance. Compared to the original model, model parameters and GFLOPs are reduced by 52.66% and 19.9%, respectively, while mAP@0.5 is improved by 1%, recall by 2.7%, and precision by 2.4%. Further comparison with popular detection models YOLOv5 medium (YOLOv5m), YOLOv6 medium (YOLOv6m), and YOLOv8 medium (YOLOv8m) shows the improved model has the highest detection accuracy and lightest parameters for detecting four common tobacco pests, with optimal overall performance. The improved YOLOv8 detection model proposed facilitates precise, instantaneous pest detection and recognition for tobacco and other crops, securing high-accuracy, comprehensive pest identification.
Funder
Guangdong Province
China Tobacco Corporation
Guangdong Tobacco Association
Guangzhou Science and Technology Plan
Reference41 articles.
1. Multi-scale feature fusion method for bundled tobacco leaf classification based on fine-grained classification network;Chen;J. Anhui Agric. Univ.,2022
2. Current Status and Future Development of Flue-cured Tobacco Production in Guangdong Province;Qu;Guangdong Agric. Sci.,2019
3. Apple, J.L., and Smith, R.F. (1976). Integrated Pest Management, Springer.
4. Deep Learning in Agriculture: A Survey;Kamilaris;Comput. Electron. Agric.,2018
5. Santos, L., Santos, F.N., Oliveira, P.M., and Shinde, P. (2019, January 20–22). Deep Learning Applications in Agriculture: A Short Review. Proceedings of the Robot 2019: Fourth Iberian Robotics Conference, Porto, Portugal.
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