Frontiers in Plant Science (Mar 2023)

BAF-Net: Bidirectional attention fusion network via CNN and transformers for the pepper leaf segmentation

  • Jiangxiong Fang,
  • Houtao Jiang,
  • Shiqing Zhang,
  • Lin Sun,
  • Xudong Hu,
  • Xudong Hu,
  • Jun Liu,
  • Meng Gong,
  • Huaxiang Liu,
  • Youyao Fu

DOI
https://doi.org/10.3389/fpls.2023.1123410
Journal volume & issue
Vol. 14

Abstract

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The segmentation of pepper leaves from pepper images is of great significance for the accurate control of pepper leaf diseases. To address the issue, we propose a bidirectional attention fusion network combing the convolution neural network (CNN) and Swin Transformer, called BAF-Net, to segment the pepper leaf image. Specially, BAF-Net first uses a multi-scale fusion feature (MSFF) branch to extract the long-range dependencies by constructing the cascaded Swin Transformer-based and CNN-based block, which is based on the U-shape architecture. Then, it uses a full-scale feature fusion (FSFF) branch to enhance the boundary information and attain the detailed information. Finally, an adaptive bidirectional attention module is designed to bridge the relation of the MSFF and FSFF features. The results on four pepper leaf datasets demonstrated that our model obtains F1 scores of 96.75%, 91.10%, 97.34% and 94.42%, and IoU of 95.68%, 86.76%, 96.12% and 91.44%, respectively. Compared to the state-of-the-art models, the proposed model achieves better segmentation performance. The code will be available at the website: https://github.com/fangchj2002/BAF-Net.

Keywords