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Multi-feature machine learning model for automatic segmentation of green fractional vegetation cover for high-throughput field phenotyping.

Pouria Sadhegi-TehranNicolas VirletKasra SabermaneshMalcolm J Hawkesford
Published in: Plant methods (2017)
The method described is capable of coping with the environmental challenges faced in field conditions, with high levels of adaptiveness and without the need for adjusting a threshold for each digital image. The proposed method is also an ideal candidate to process a time series of phenotypic information throughout the crop growth acquired in the field. Moreover, the introduced method has an advantage that it is not limited to growth measurements only but can be applied on other applications such as identifying weeds, diseases, stress, etc.
Keyphrases
  • machine learning
  • deep learning
  • high throughput
  • climate change
  • artificial intelligence
  • depressive symptoms
  • convolutional neural network
  • single cell
  • risk assessment
  • life cycle