PhenoNet: A two-stage lightweight deep learning framework for real-time wheat phenophase classification

Abstract

This paper presents PhenoNet, a two-stage lightweight deep learning framework for real-time wheat phenophase classification using remote sensing imagery.

Key Contributions

  • Developed a lightweight deep learning architecture for real-time processing
  • Achieved high accuracy in wheat phenophase classification
  • Demonstrated practical applicability for agricultural monitoring

Citation

@article{zhang2024phenonet,
  title={PhenoNet: A two-stage lightweight deep learning framework for real-time wheat phenophase classification},
  author={Zhang, Ruinan and Jin, Shuai and Zhang, Yue and others},
  journal={ISPRS Journal of Photogrammetry and Remote Sensing},
  volume={208},
  pages={136--157},
  year={2024},
  publisher={Elsevier}
}
Posted on:
January 12, 2024
Length:
1 minute read, 80 words
Tags:
Deep Learning Remote Sensing Agriculture Classification
See Also:
PhenoSR: Enhancing organ-level phenotyping with super-resolution RGB UAV imagery for large-scale field experiments
SenNet: A dual-branch image semantic segmentation network for wheat senescence evaluation and high-yielding variety screening
OSNet: an oriented instance segmentation network of breeding plot extraction from UAV RGB imagery