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An Improved Multi-Scale Feature Extraction Network for Rice Disease and Pest Recognition

  • Pengtao Lv
  • , Heliang Xu
  • , Yana Zhang
  • , Qinghui Zhang
  • , Quan Pan
  • , Yao Qin
  • , Youyang Chen
  • , Dengke Cao
  • , Jingping Wang
  • , Mengya Zhang
  • , Cong Chen
  • Henan University of Technology

科研成果: 期刊稿件文章同行评审

10 引用 (Scopus)

摘要

In the process of rice production, rice pests are one of the main factors that cause rice yield reduction. To implement prevention and control measures, it is necessary to accurately identify the types of rice pests and diseases. However, the application of image recognition technologies focused on the agricultural field, especially in the field of rice disease and pest identification, is relatively limited. Existing research on rice diseases and pests has problems such as single data types, low data volume, and low recognition accuracy. Therefore, we constructed the rice pest and disease dataset (RPDD), which was expanded through data enhancement methods. Then, based on the ResNet structure and the convolutional attention mechanism module, we proposed a Lightweight Multi-scale Feature Extraction Network (LMN) to extract multi-scale features at a finer granularity. The proposed LMN model achieved an average classification accuracy of 95.38% and an F1-Score of 94.5% on the RPDD. The parameter size of the model is 1.4 M, and the FLOPs is 1.65 G. The results suggest that the LMN model performs rice disease and pest classification tasks more effectively than the baseline ResNet model by significantly reducing the model size and improving accuracy.

源语言英语
文章编号827
期刊Insects
15
11
DOI
出版状态已出版 - 11月 2024

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