J* E* C* N* U* N* S* ›› 2025, Vol. 2025 ›› Issue (1): 59-71.doi: 10.3969/j.issn.1000-5641.2025.01.005

• Computer Science • Previous Articles     Next Articles

Knowledge-distillation-based lightweight crop-disease-recognition algorithm

Wenjing HU1, Longquan JIANG2, Junlong YU1, Yiqian XU3,*(), Qipeng LIU4, Lei LIANG5, Jiahao LI4   

  1. 1. Maynooth International Engineering College, Fuzhou University, Fuzhou 350108, China
    2. Industrial Internet Innovation Center (Shanghai) Co. Ltd., Shanghai 200131, China
    3. Academy for Engineering & Technology, Fudan University, Shanghai 200433, China
    4. Shanghai Lankaukei Technology Development Co. Ltd., Shanghai 200131, China
    5. Muxing Intelligent Industrial Technology (Shanghai) Co. Ltd., Shanghai 200131, China
  • Received:2023-12-26 Online:2025-01-25 Published:2025-01-20
  • Contact: Yiqian XU E-mail:xuyiqian@fudan.edu.cn

Abstract:

Crop diseases are one of the main factors threatening crop growth. In this regard, machine-learning algorithms can efficiently detect large-scale crop diseases and are beneficial for timely processing and improving crop yield and quality. In large-scale agricultural scenarios, owing to limitations in power supply and other conditions, the power-supply requirements of high-computing-power devices such as servers cannot be fulfilled. Most existing deep-network models require high computing power and cannot be deployed easily on low-power embedded devices, thus hindering the accurate identification and application of large-scale crop diseases. Hence, this paper proposes a lightweight crop-disease-recognition algorithm based on knowledge distillation. A student model based on a residual structure and the attention mechanism is designed and knowledge distillation is applied to complete transfer learning from the ConvNeXt model, thus achieving the lightweight model while maintaining high-precision recognition. The experimental results show that the accuracy of image classification for 39 types of crop diseases is 98.72% under a model size of 2.28 MB, which satisfies the requirement for deployment in embedded devices and indicates a practical and efficient solution for crop-disease recognition.

Key words: crop disease identification, convolutional neural networks, knowledge distillation algorithms, attention mechanisms

CLC Number: