Pre-Symptomatic Prediction of Plant Drought Stress Using Dirichlet-Aggregation Regression on Hyperspectral Images

Authors

  • Kristian Kersting Fraunhofer IAIS and University of Bonn
  • Zhao Xu Fraunhofer IAIS
  • Mirwaes Wahabzada Fraunhofer IAIS
  • Christian Bauckhage Fraunhofer IAIS and University of Bonn
  • Christian Thurau Game Analytics ApS
  • Christoph Römer University of Bonn
  • Agim Ballvora University of Bonn
  • Uwe Rascher Forschungszentrum Juelich
  • Jen Leon University of Bonn
  • Lutz Plümer Univeriy of Bonn

DOI:

https://doi.org/10.1609/aaai.v26i1.8168

Keywords:

Massive Data, Matrix Factorization, Gaussian Process, Prediction, Plant Drought Stress

Abstract

Pre-symptomatic drought stress prediction is of great relevance in precision plant protection, ultimately helping to meet the challenge of "How to feed a hungry world?". Unfortunately, it also presents unique computational problems in scale and interpretability: it is a temporal, large-scale prediction task, e.g., when monitoring plants over time using hyperspectral imaging, and features are `things' with a `biological' meaning and interpretation and not just mathematical abstractions computable for any data. In this paper we propose Dirichlet-aggregation regression (DAR) to meet the challenge. DAR represents all data by means of convex combinations of only few extreme ones computable in linear time and easy to interpret.Then, it puts a Gaussian process prior on the Dirichlet distributions induced on the simplex spanned by the extremes. The prior can be a function of any observed meta feature such as time, location, type of fertilization, and plant species. We evaluated DAR on two hyperspectral image series of plants over time with about 2 (resp. 5.8) Billion matrix entries. The results demonstrate that DAR can be learned efficiently and predicts stress well before it becomes visible to the human eye.

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Published

2021-09-20

How to Cite

Kersting, K., Xu, Z., Wahabzada, M., Bauckhage, C., Thurau, C., Römer, C., Ballvora, A., Rascher, U., Leon, J., & Plümer, L. (2021). Pre-Symptomatic Prediction of Plant Drought Stress Using Dirichlet-Aggregation Regression on Hyperspectral Images. Proceedings of the AAAI Conference on Artificial Intelligence, 26(1), 302-308. https://doi.org/10.1609/aaai.v26i1.8168

Issue

Section

AAAI Technical Track: Computational Sustainability