Author
Listed:
- Qing Dong
(Department of Process Equipment and Control Engineering, School of Mechanical Engineering and Automation, Northeastern University, Shenyang 110819, China)
- Lina Sun
(Department of Process Equipment and Control Engineering, School of Mechanical Engineering and Automation, Northeastern University, Shenyang 110819, China)
- Tianxin Han
(Department of Process Equipment and Control Engineering, School of Mechanical Engineering and Automation, Northeastern University, Shenyang 110819, China)
- Minqi Cai
(Institute of Insect Research, College of Animal Science and Technology, Yangzhou University, Yangzhou 225000, China)
- Ce Gao
(School of Economics and Business Administration, Beijing Normal University, Beijing 100875, China)
Abstract
Timely and effective pest detection is essential for agricultural production, facing challenges such as complex backgrounds and a vast number of parameters. Seeking solutions has become a pressing matter. This paper, based on the YOLOv5 algorithm, developed the PestLite model. The model surpasses previous spatial pooling methods with our uniquely designed Multi-Level Spatial Pyramid Pooling (MTSPPF). Using a lightweight unit, it integrates convolution, normalization, and activation operations. It excels in capturing multi-scale features, ensuring rich extraction of key information at various scales. Notably, MTSPPF not only enhances detection accuracy but also reduces the parameter size, making it ideal for lightweight pest detection models. Additionally, we introduced the Involution and Efficient Channel Attention (ECA) attention mechanisms to enhance contextual understanding. We also replaced traditional upsampling with Content-Aware ReAssembly of FEatures (CARAFE), which enable the model to achieve higher mean average precision in detection. Testing on a pest dataset showed improved accuracy while reducing parameter size. The mAP50 increased from 87.9% to 90.7%, and the parameter count decreased from 7.03 M to 6.09 M. We further validated the PestLite model using the IP102 dataset, and on the other hand, we conducted comparisons with mainstream models. Furthermore, we visualized the detection targets. The results indicate that the PestLite model provides an effective solution for real-time target detection in agricultural pests.
Suggested Citation
Qing Dong & Lina Sun & Tianxin Han & Minqi Cai & Ce Gao, 2024.
"PestLite: A Novel YOLO-Based Deep Learning Technique for Crop Pest Detection,"
Agriculture, MDPI, vol. 14(2), pages 1-30, January.
Handle:
RePEc:gam:jagris:v:14:y:2024:i:2:p:228-:d:1330053
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