Estimating canola phenology using synthetic aperture radar

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DOI

https://doi.org/10.1016/j.rse.2018.10.012

Language of the publication
English
Date
2018-12-15
Type
Article
Author(s)
  • McNairn, Heather
  • Jiao, Xianfeng
  • Pacheco, Anna
  • Sinha, Abhijit
  • Tan, Weikai
  • Li, Yifeng
Publisher
Elsevier

Alternative title

Estimating canola phenology using synthetic aperture radar

Abstract

Prolonged periods of wet soil conditions, when present during critical crop development stages, can significantly elevate the risk of some crop diseases. Wet soils in fields of flowering canola are a concern with respect to the development of sclerotinia as this pathogen feeds on the petals of the canola flower. As such, determining if canola is in bloom during periods of high moisture is important in deciding whether to take action to mitigate this disease. In this paper, RADARSAT-2 quad polarization and TerraSAR-X dual polarization Synthetic Aperture Radar (SAR) data were used with a novel dynamic filtering framework to estimate canola growth stages. In this process, a new crop growth stage indicator was developed and SAR polarimetric parameters sensitive to changes in phenology were identified. Model development used multi-year SAR satellite and field data for one site in Manitoba, Canada. The crop growth estimator was then tested on unseen data from three sites, one in each of Canada's Prairie provinces. This independent validation established that the growth estimator was able to ac- curately determine canola growth stage and date of flowering with high accuracy. Correlation coefficients (r- values) between observed and estimated phenology ranged from 0.91 to 0.96. Given that this method performed well on test data from other sites and years, this approach could be widely adopted for monitoring the devel- opment of canola over extended regions.

Subject

  • Agriculture

Peer review

Yes

Open access level

Green

Identifiers

ISSN
1879-0704

Article

Journal title
Remote Sensing of Environment
Journal volume
219

Citation(s)

McNairn, H., Jiao, X., Pacheco, A., Sinha, A., Tan, W., &; Li, Y. (2018). Estimating canola phenology using Synthetic Aperture Radar. Remote Sensing of Environment, 219, 196–205. https://doi.org/10.1016/j.rse.2018.10.012

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Collection(s)

Agricultural practices, equipment, and technology

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