Agronomy (Nov 2022)

A Faster R-CNN-Based Model for the Identification of Weed Seedling

  • Ye Mu,
  • Ruilong Feng,
  • Ruiwen Ni,
  • Ji Li,
  • Tianye Luo,
  • Tonghe Liu,
  • Xue Li,
  • He Gong,
  • Ying Guo,
  • Yu Sun,
  • Yu Bao,
  • Shijun Li,
  • Yingkai Wang,
  • Tianli Hu

DOI
https://doi.org/10.3390/agronomy12112867
Journal volume & issue
Vol. 12, no. 11
p. 2867

Abstract

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The accurate and rapid acquisition of crop and weed information is an important prerequisite for automated weeding operations. This paper proposes the application of a network model based on Faster R-CNN for weed identification in images of cropping areas. The feature pyramid network (FPN) algorithm is integrated into the Faster R-CNN network to improve recognition accuracy. The Faster R-CNN deep learning network model is used to share convolution features, and the ResNeXt network is fused with FPN for feature extractions. Tests using >3000 images for training and >1000 images for testing demonstrate a recognition accuracy of >95%. The proposed method can effectively detect weeds in images with complex backgrounds taken in the field, thereby facilitating accurate automated weed control systems.

Keywords