• DocumentCode
    3609596
  • Title

    Prediction of Water Depth From Multispectral Satellite Imagery—The Regression Kriging Alternative

  • Author

    Haibin Su ; Hongxing Liu ; Qiusheng Wu

  • Author_Institution
    Dept. of Phys. & Geosci., Texas A&M Univ. - Kingsville, Kingsville, TX, USA
  • Volume
    12
  • Issue
    12
  • fYear
    2015
  • Firstpage
    2511
  • Lastpage
    2515
  • Abstract
    Bathymetric information is crucial to the study and management of coastal zones. Passive remote sensing provides a cost-effective alternative to acoustic surveys and bathymetric LiDAR techniques. Most previous studies estimated water depth from multispectral imagery in shallow coastal and inland waters by establishing the relationship between image pixel spectral values and known water depth measurements, in which the log-linear inversion model is most widely used. Given a set of known water depth sample points, a bathymetric grid/map can be created by using a spatial interpolation technique. However, when a limited number of water depth sample points are available, the interpolation result is often unsatisfactory for portraying benthic morphology. In this letter, we propose to use the regression kriging (RK) approach to combine the optimal spatial interpolation of kriging with the high-resolution auxiliary information of multispectral imagery for a detailed bathymetric mapping. A case study has been performed to demonstrate and evaluate the performance of the RK method in comparison with ordinary kriging and log-linear inversion methods. It shows that the RK method can produce more accurate water depth estimations than the log-linear inversion method due to the account of the spatial pattern of the modeling residuals. The bathymetric grid created from the RK contains much more spatial details about the ocean floor morphology than that from the ordinary kriging owing to the incorporation of auxiliary information from multispectral satellite imagery.
  • Keywords
    bathymetry; interpolation; oceanographic techniques; optical radar; regression analysis; remote sensing by laser beam; remote sensing by radar; acoustic surveys; bathymetric LiDAR techniques; bathymetric grid; bathymetric information; bathymetric map; bathymetric mapping; benthic morphology; coastal zone management; high-resolution auxiliary information; image pixel spectral values; inland water; log-linear inversion method; log-linear inversion model; modeling residuals; multispectral imagery; multispectral satellite imagery; ocean floor morphology; optimal spatial interpolation; passive remote sensing; regression kriging approach; shallow coastal water; spatial interpolation technique; spatial pattern; water depth estimations; water depth measurements; water depth sample points; Accuracy; Correlation; Interpolation; Laser radar; Remote sensing; Satellites; Sea measurements; Bathymetry; interpolation; multispectral; regression kriging (RK); remote sensing; water depth;
  • fLanguage
    English
  • Journal_Title
    Geoscience and Remote Sensing Letters, IEEE
  • Publisher
    ieee
  • ISSN
    1545-598X
  • Type

    jour

  • DOI
    10.1109/LGRS.2015.2489678
  • Filename
    7312929