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Article
Benthic Classification and IOP Retrievals in Shallow Water Environments using MERIS Imagery
Remote Sensing of Environment
  • Rodrigo A. Garcia, University of Massachusetts
  • Zhongping Lee, University of Massachusetts
  • Brian B. Barnes, University of South Florida
  • Chuanmin Hu, University of South Florida
  • Heidi M. Dierssen, University of Connecticut
  • Eric J. Hochberg, Bermuda Institute of Ocean Sciences
Document Type
Article
Publication Date
11-1-2020
Keywords
  • MERIS,
  • Great Bahama Bank,
  • Inherent optical properties,
  • Atmospheric correction,
  • Bathymetry,
  • Benthic classification
Digital Object Identifier (DOI)
https://doi.org/10.1016/j.rse.2020.112015
Disciplines
Abstract

Deriving inherent optical properties (IOPs) from multispectral imagery of shallow water environments using physics-based inversion models require prior knowledge of the spectral reflectance of the bottom substrate. The use of an incorrect bottom reflectance adversely affects the IOPs and, in part, the depth derived from inversion models. To date, an operational approach that determines the bottom reflectance from multispectral imagery is lacking; development in this area is especially paramount for locations that exhibit temporal variability in the spatial distributions of submerged aquatic vegetation and benthic microalgae. In this work, we develop a multispectral implementation of the HOPE-LUT algorithm (Hyperspectral Optimization Processing Exemplar with benthic Look Up Table), and apply the approach to MERIS imagery of the Great Bahama Bank (GBB). Overall benthic classification accuracy of this approach was 80.0%, revealing the areal coverage of benthic flora can range from 1052.3 km2 to 6169.3 km2 between years in the Exumas, GBB. Comparison of HOPE-LUT IOP retrievals to common inversion model implementations (particularly HOPE, with its default sand endmember) shows that using an incorrect bottom reflectance can lead to over-estimations in aphy(443) (absorption coefficient of phytoplankton at 443 nm), of up to 95%, under-estimations of adg(443) (absorption coefficient of detritus and gelbstoff) up to 50%, and over-estimations of depth up to 20%. In addition, the HOPE-LUT parameterizations generate IOPs within the range of those measured in situ. We demonstrate that, at the scale of a MERIS pixel, the dominant substrates of seagrass, unattached bottom macroalgae and benthic microalgae are spectrally unresolvable at the depths that these classes occur in the GBB. Lastly, we evaluate the performance of commonly used atmospheric corrections algorithms for bathymetry estimation and benthic classification accuracy. The combined benthic classification and inversion scheme presented here is autonomous, i.e., it does not require scene-specific thresholds or modifications. Thus, it should be portable to Sentinel 3 OLCI and potentially MODIS Aqua imagery to obtain a continuous time series of changes in IOPs and benthic cover for the shallow waters over the Great Bahama Bank.

Citation / Publisher Attribution

Remote Sensing of Environment, v. 249, article 112015

Citation Information
Rodrigo A. Garcia, Zhongping Lee, Brian B. Barnes, Chuanmin Hu, et al.. "Benthic Classification and IOP Retrievals in Shallow Water Environments using MERIS Imagery" Remote Sensing of Environment Vol. 249 (2020)
Available at: http://works.bepress.com/chuanmin_hu/82/