/Wheat-Ears-Detection-Dataset

Dataset from the Ear density estimation from high resolution RGB imagery using deep learning technique paper

Note / News

For people interested about this work/dataset I recommand to check the Global Wheat Dataset : A more large and diverse dataset for wheat head detection http://www.global-wheat.com/ https://zenodo.org/record/5092309#.YaPEh9DMJPY The Wheat Ears Dection Dataset has been integrated in Global Wheat Dataset

Wheat-Ears-Detection-Dataset

Dataset from the Ear density estimation from high resolution RGB imagery using deep learning technique paper

[Simon Madec], [Frederic Baret], [Benoit de Solan], [Shouyang Liu] The Wheat-Ears-Dection-Dataset (WEDD) is a dataset is a image dataset designed fo wheat ears detection in field condition.
Ex

Overview

Highlights

  • 236 high resolution images images (6000*4000)
  • Wheat ears annotated with a bounding box
  • 30729 ears identified
  • Spatial resolution (GSD) of 0.13mm/pixel
  • Two images for each microplots
  • 20 contrasted genotype with 6 replicated growth in two environment

Research Paper

To cite the paper :

Madec, S., Jin, X., Lu, H., De Solan, B., Liu, S., Duyme, F., et al. (2019). Ear density estimation from high resolution RGB imagery using deep learning technique. Agric. For. Meteorol. 264, 225–234. doi:10.1016/j.agrformet.2018.10.013.

Downloads

Dataset avalaible here

Labels

Please download replicate information along with images used for training and testing [here]

Results

Below we present results.

Method Date Source AP rRMSE
Faster-RCNN [1] 21/10/2018 [2] 0.85 5.3% 0.91

Annotation Tool

The LabelIMG tool were used, please refer to this repository.