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Intelligent Sampling for Vegetation Nitrogen Mapping Based on Hybrid Machine Learning Algorithms.

Jochem Verrelst1, Katja Berger2, Juan Pablo Rivera-Caicedo3

  • 1Image Processing Laboratory (IPL), Universitat de València, 46010 València, Spain.

IEEE Geoscience and Remote Sensing Letters : a Publication of the IEEE Geoscience and Remote Sensing Society
|September 12, 2022
PubMed
Summary
This summary is machine-generated.

Active learning efficiently optimized satellite data for mapping crop nitrogen content. This approach significantly reduced training data needs while ensuring accurate and reliable vegetation nitrogen estimates from hyperspectral imaging.

Keywords:
Active learning (AL)Gaussian processes (GP)hybrid retrieval methodskernel ridge regression (KRR)nitrogen

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Area of Science:

  • Remote sensing
  • Agricultural science
  • Machine learning

Background:

  • Satellite imaging spectroscopy missions provide spatiotemporal data for vegetation property mapping.
  • Precise and rapid derivation of crop-specific information, like nitrogen content, is crucial for agricultural monitoring.
  • Efficient machine learning models require intelligently sampled training databases for fast processing.

Purpose of the Study:

  • To implement active learning (AL) heuristics for optimizing training databases for vegetation nitrogen estimation.
  • To minimize training data size while maintaining model performance for mapping aboveground nitrogen content.
  • To utilize variational heteroscedastic Gaussian processes regression (VHGPR) for accurate nitrogen estimation and uncertainty quantification.

Main Methods:

  • Active learning (AL) heuristics with kernel ridge regression (KRR) were used to optimize a training database.
  • Uncertainty and diversity criteria were applied to a lookup table (LUT) of simulated hyperspectral reflectance and nitrogen content.
  • Euclidian distance-based diversity (EBD) was identified as the best-performing AL criterion, reducing the LUT by 81%.

Main Results:

  • The optimized, reduced LUT enabled efficient training of VHGPR for aboveground nitrogen content estimation.
  • Validation against in situ data yielded excellent results: RMSE of 1.84 g/m² and R² of 0.92.
  • Mapping nitrogen content in an agricultural region provided reliable estimates with meaningful uncertainty assessments.

Conclusions:

  • Active learning significantly reduces the data requirements for training machine learning models in remote sensing.
  • VHGPR coupled with AL offers a competitive and robust approach for estimating vegetation nitrogen content from satellite data.
  • This hybrid workflow shows promise for operational nitrogen monitoring using future satellite imaging spectroscopy missions.