Sensors (Dec 2017)

Estimation of the Botanical Composition of Clover-Grass Leys from RGB Images Using Data Simulation and Fully Convolutional Neural Networks

  • Søren Skovsen,
  • Mads Dyrmann,
  • Anders Krogh Mortensen,
  • Kim Arild Steen,
  • Ole Green,
  • Jørgen Eriksen,
  • René Gislum,
  • Rasmus Nyholm Jørgensen,
  • Henrik Karstoft

DOI
https://doi.org/10.3390/s17122930
Journal volume & issue
Vol. 17, no. 12
p. 2930

Abstract

Read online

Optimal fertilization of clover-grass fields relies on knowledge of the clover and grass fractions. This study shows how knowledge can be obtained by analyzing images collected in fields automatically. A fully convolutional neural network was trained to create a pixel-wise classification of clover, grass, and weeds in red, green, and blue (RGB) images of clover-grass mixtures. The estimated clover fractions of the dry matter from the images were found to be highly correlated with the real clover fractions of the dry matter, making this a cheap and non-destructive way of monitoring clover-grass fields. The network was trained solely on simulated top-down images of clover-grass fields. This enables the network to distinguish clover, grass, and weed pixels in real images. The use of simulated images for training reduces the manual labor to a few hours, as compared to more than 3000 h when all the real images are annotated for training. The network was tested on images with varied clover/grass ratios and achieved an overall pixel classification accuracy of 83.4%, while estimating the dry matter clover fraction with a standard deviation of 7.8%.

Keywords