湖北农业科学 ›› 2024, Vol. 63 ›› Issue (6): 198-203.doi: 10.14088/j.cnki.issn0439-8114.2024.06.032

• 农业信息与工程 • 上一篇    下一篇

基于多光谱航空图像的农田生长异常区域实时分割模型

胡海洋, 陈健, 张丽莲, 杨林楠   

  1. 云南农业大学大数据学院/云南省农业大数据工程技术研究中心/云南省绿色农产品大数据智能信息处理工程研究中心,昆明 650201
  • 收稿日期:2024-01-27 出版日期:2024-06-25 发布日期:2024-06-26
  • 通讯作者: 杨林楠(1964-),男,云南保山人,教授,主要从事计算机应用技术、农业大数据研究,(电话)13888263241(电子信箱)1985008@ynau.edu.cn。
  • 作者简介:胡海洋(1999-),男,山东济宁人,在读硕士研究生,研究方向为机器视觉,(电话)15666788256(电子信箱)huhaiyang.it@qq.com。
  • 基金资助:
    云南省重大科技专项(202102AE090015; 202102AE090009)

Real-time segmentation model for abnormal growth areas in farmland based on multispectral aerial images

HU Hai-yang, CHEN Jian, ZHANG Li-lian, YANG Lin-nan   

  1. College of Big Data/Yunnan Engineering Technology Research Center of Agricultural Big Data/Yunnan Engineering Research Center for Big Data Intelligent Information Processing of Green Agricultural Products,Yunnan Agricultural University, Kunming 650201,China
  • Received:2024-01-27 Published:2024-06-25 Online:2024-06-26

摘要: 针对农田异常区域分割问题,采用特征融合跳跃连接模块和全局-局部注意力模块改进UNet网络模型,提出了一种农田异常区域实时分割网络,实现了对多种农田异常区域的精细分割。结果表明,农田生长异常区域实时分割模型的平均交并比(MIoU)明显优于其他模型,平均交并比为41.24%;相较于使用UNet作为基线的模型,虽然本研究模型的参数量略有增加,但农田分割效果明显提升,MIoU提高了4.16个百分点;与基于Transformer编码器的SegFormer模型相比,本研究模型的参数量基本相同,MIoU提高了2.50个百分点。本研究模型通过采用自适应采样训练方法确保在每个类别上都能取得出色的分割效果。利用多光谱航空图像训练农田生长异常区域实时分割模型,有助于实现无人机对农田生长进行实时监测、预警,推动智慧农业发展进程,为自动监测农田生长情况提供了新的方法和思路。

关键词: 多光谱, 农田生长异常区域, 航空图像, UNet, DeepLabV3+, SegFormer

Abstract: In response to the problem of abnormal segmentation in farmland, a feature fusion skip connection module and a global-local attention module were used to improve the UNet network model. A real-time segmentation network for abnormal farmland areas was proposed, which achieved fine segmentation of various abnormal farmland areas. The results showed that the Mean Intersection Union ratio (MIoU) of the real-time segmentation model for abnormal growth areas in farmland was significantly better than that of other models, with a MIoU of 41.24%;compared to the model using UNet as the baseline, although the number of parameters in this study model had slightly increased, the farmland segmentation effect had significantly improved, with an increase of 4.16 percentage points in MIoU;compared with the SegFormer model based on Transformer encoder, the parameter count of this study model was basically the same, with an increase of 2.50 percentage points in MIoU. This research model ensured excellent segmentation performance in each category by using adaptive sampling training methods. Using multispectral aerial images to train a real-time segmentation model for abnormal growth areas in farmland could help achieve real-time monitoring and early warning of farmland growth by drones, promote the development of smart agriculture, and provide new methods and ideas for automatic monitoring of farmland growth.

Key words: multispectral, abnormal growth areas in farmland, aerial images, UNet, DeepLabV3+, SegFormer

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