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Temporally generalizable land cover classification: A recurrent convolutional neural network unveils major coastal change through time

Publication ,  Journal Article
Gray, PC; Chamorro, DF; Ridge, JT; Kerner, HR; Ury, EA; Johnston, DW
Published in: Remote Sensing
October 1, 2021

The ability to accurately classify land cover in periods before appropriate training and validation data exist is a critical step towards understanding subtle long-term impacts of climate change. These trends cannot be properly understood and distinguished from individual disturbance events or decadal cycles using only a decade or less of data. Understanding these long-term changes in low lying coastal areas, home to a huge proportion of the global population, is of particular importance. Relatively simple deep learning models that extract representative spatiotemporal patterns can lead to major improvements in temporal generalizability. To provide insight into major changes in low lying coastal areas, our study (1) developed a recurrent convolutional neural network that incorporates spectral, spatial, and temporal contexts for predicting land cover class, (2) evaluated this model across time and space and compared this model to conventional Random Forest and Support Vector Machine methods as well as other deep learning approaches, and (3) applied this model to classify land cover across 20 years of Landsat 5 data in the low-lying coastal plain of North Carolina, USA. We observed striking changes related to sea level rise that support evidence on a smaller scale of agricultural land and forests transitioning into wetlands and “ghost forests”. This work demonstrates that recurrent convolutional neural networks should be considered when a model is needed that can generalize across time and that they can help uncover important trends necessary for understanding and responding to climate change in vulnerable coastal regions.

Duke Scholars

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Published In

Remote Sensing

DOI

EISSN

2072-4292

Publication Date

October 1, 2021

Volume

13

Issue

19

Related Subject Headings

  • 4013 Geomatic engineering
  • 3709 Physical geography and environmental geoscience
  • 3701 Atmospheric sciences
  • 0909 Geomatic Engineering
  • 0406 Physical Geography and Environmental Geoscience
  • 0203 Classical Physics
 

Citation

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Gray, P. C., Chamorro, D. F., Ridge, J. T., Kerner, H. R., Ury, E. A., & Johnston, D. W. (2021). Temporally generalizable land cover classification: A recurrent convolutional neural network unveils major coastal change through time. Remote Sensing, 13(19). https://doi.org/10.3390/rs13193953
Gray, P. C., D. F. Chamorro, J. T. Ridge, H. R. Kerner, E. A. Ury, and D. W. Johnston. “Temporally generalizable land cover classification: A recurrent convolutional neural network unveils major coastal change through time.” Remote Sensing 13, no. 19 (October 1, 2021). https://doi.org/10.3390/rs13193953.
Gray PC, Chamorro DF, Ridge JT, Kerner HR, Ury EA, Johnston DW. Temporally generalizable land cover classification: A recurrent convolutional neural network unveils major coastal change through time. Remote Sensing. 2021 Oct 1;13(19).
Gray, P. C., et al. “Temporally generalizable land cover classification: A recurrent convolutional neural network unveils major coastal change through time.” Remote Sensing, vol. 13, no. 19, Oct. 2021. Scopus, doi:10.3390/rs13193953.
Gray PC, Chamorro DF, Ridge JT, Kerner HR, Ury EA, Johnston DW. Temporally generalizable land cover classification: A recurrent convolutional neural network unveils major coastal change through time. Remote Sensing. 2021 Oct 1;13(19).

Published In

Remote Sensing

DOI

EISSN

2072-4292

Publication Date

October 1, 2021

Volume

13

Issue

19

Related Subject Headings

  • 4013 Geomatic engineering
  • 3709 Physical geography and environmental geoscience
  • 3701 Atmospheric sciences
  • 0909 Geomatic Engineering
  • 0406 Physical Geography and Environmental Geoscience
  • 0203 Classical Physics