[BibTeX] [RIS]
Improved and Generalized Vine Line Detection on Aerial Images Using Asymmetrical Neural Networks and ML Subclassifiers
Publicatietype: In proceedings
Citatie:
Jaar: 2021
Maand: Oktober
Uitgever: i6doc.com publ.
Locatie: Bruges, Belgium (Online)
Organisatie: ESANN
ISBN: 978287587082-7
Samenvatting: It is widely accepted that deep neural networks are very efficient for detecting objects in images. They reach their limit when detecting multiple instances of long lines in low-resolution images. We present an original methodology for the recognition of vine lines in low-resolution satellite images. The method consists in combining an asymmetrical neural network with a sub-classifier. We first compare a traditional U-Net architecture with an asymmetrical U-Net architecture designed for precision agriculture. We then highlight the significant improvement in vine line detection when a Random Forest is added after the customized U-Net. This methodology addresses the complex task of dissociating vine lines from other agricultural objects. As a result, our experiments improve the precision from 0.83 to 0.94 over our optimized neural network.
Trefwoorden:
Auteurs Treboux, Jerome
Ingold, Rolf
Genoud, Dominique
Toegevoegd door: []
Totaalscore: 0
Bestanden
  • ESANN2021_Improved_and_General...
Aantekeningen
    Onderwerpen