Your Location:
Home >
Browse articles >
Image Segmentation Method of Cucurbitaceae Scion Seedling Cotyledons Based on Mobile-UNet
Updated:2024-02-22
    • Image Segmentation Method of Cucurbitaceae Scion Seedling Cotyledons Based on Mobile-UNet

    • LAI Yibo

      ,  

      YU Qingcang

      ,  

      FANG Jiaji

      ,  

      JIANG Lurong

      ,  

      WU Yao

      ,  

      HUANG Zheng

      ,  
    • Software Guide   Vol. 23, Issue 2, Pages: 153-161(2024)
    • DOI:10.11907/rjdk.231141    

      CLC:

    Scan for full text

  • Cite this article

    PDF

  • LAI Yibo,YU Qingcang,FANG Jiaji,et al.Image Segmentation Method of Cucurbitaceae Scion Seedling Cotyledons Based on Mobile-UNet[J].Software Guide,2024,23(02):153-161. DOI: 10.11907/rjdk.231141.

  •  
  •  

    * The above content is automatically generated by AI and is for reference only. This website does not assume any commercial or legal responsibility for the consequences arising from the use of the following content on this website.

    39

    Views

    35

    Downloads

    0

    CSCD

    Alert me when the article has been cited
    Submit
    Tools
    Download
    Export Citation
    Share
    Add to favorites
    Add to my album

    Related Articles

    Research on Lightweight Remote Sensing Image Semantic Segmentation Method Based on Multilayer Perceptron
    A Method and System Application for Satellite Image Cultivated Land Change Detection Based on Deep Learning
    An Improved Semantic SLAM Algorithm Based on Object Tracking
    Research on Lightweight Self-Attention Mechanism as Backbone for Natural Land Cover Segmentation
    Semantic Segmentation Method of Street Scenes Image Based on Attention Mechanism

    Related Author

    No data

    Related Institution

    School of Intelligent Technology and Engineering, Chongqing University of Science and Technology
    South Digital Technology Co.,Ltd.
    School of Optical-Electrical and Computer Engineering, University of Shanghai for Science and Technology
    School of Information Science and Technology, Gansu Agricultural University
    Shanghai Key Laboratory of Modern Optical System
    0