Spatial Prediction of Coastal Bathymetry Based on Multispectral Satellite Imagery and Multibeam Data

The coastal shallow water zone can be a challenging and costly environment in which to acquire bathymetry and other oceanographic data using traditional survey methods. Much of the coastal shallow water zone worldwide remains unmapped using recent techniques and is, therefore, poorly understood. Optical satellite imagery is proving to be a useful tool in predicting water depth in coastal zones, particularly in conjunction with other standard datasets, though its quality and accuracy remains largely unconstrained. A common challenge in any prediction study is to choose a small but representative group of predictors, one of which can be determined as the best. In this respect, exploratory analyses are used to guide the make-up of this group, where we choose to compare a basic non-spatial model versus four spatial alternatives, each catering for a variety of spatial effects. Using one instance of RapidEye satellite imagery, we show that all four spatial models show better adjustments than the non-spatial model in the water depth predictions, with the best predictor yielding a correlation coefficient of actual versus predicted at 0.985. All five predictors also factor in the influence of bottom type in explaining water depth variation. However, the prediction ranges are too large to be used in high accuracy bathymetry products such as navigation charts; nevertheless, they are considered beneficial in a variety of other applications in sensitive disciplines such as environmental monitoring, seabed mapping, or coastal zone management.

[1]  D. Lyzenga Passive remote sensing techniques for mapping water depth and bottom features. , 1978, Applied optics.

[2]  Noel A Cressie,et al.  The Many Faces of Spatial Prediction , 1989 .

[3]  Martin Charlton,et al.  Geographically weighted methods and their use in network re-designs for environmental monitoring , 2014, Stochastic Environmental Research and Risk Assessment.

[4]  Virginie Lafon,et al.  SPOT shallow water bathymetry of a moderately turbid tidal inlet based on field measurements , 2002 .

[5]  R. Stumpf,et al.  Determination of water depth with high‐resolution satellite imagery over variable bottom types , 2003 .

[6]  Charles H. Fletcher,et al.  Decorrelating remote sensing color bands from bathymetry in optically shallow waters , 2006, IEEE Transactions on Geoscience and Remote Sensing.

[7]  D. Civco,et al.  Satellite remote bathymetry : a new mechanism for modeling , 1992 .

[8]  Yoji Tanaka,et al.  Modified Lyzenga's Method for Estimating Generalized Coefficients of Satellite-Based Predictor of Shallow Water Depth , 2012, IEEE Geoscience and Remote Sensing Letters.

[9]  C. Mobley,et al.  Hyperspectral remote sensing for shallow waters. 2. Deriving bottom depths and water properties by optimization. , 1999, Applied optics.

[10]  Alexander Gribov,et al.  Local polynomials for data detrending and interpolation in the presence of barriers , 2011 .

[11]  Robert A. Leathers,et al.  Ocean color remote sensing of seagrass and bathymetry in the Bahamas Banks by high‐resolution airborne imagery , 2003 .

[12]  Samantha J. Lavender,et al.  Sun Glint Correction of High and Low Spatial Resolution Images of Aquatic Scenes: a Review of Methods for Visible and Near-Infrared Wavelengths , 2009, Remote. Sens..

[13]  Jean-François Crétaux,et al.  Remote Sensing-Derived Bathymetry of Lake Poopó , 2013, Remote. Sens..

[14]  Shridhar D. Jawak,et al.  Spectral Information Analysis for the Semiautomatic Derivation of Shallow Lake Bathymetry Using High-resolution Multispectral Imagery: A Case Study of Antarctic Coastal Oasis , 2015 .

[15]  A. Stewart Fotheringham,et al.  Geographically Weighted Regression: A Method for Exploring Spatial Nonstationarity , 2010 .

[16]  Anshul Tyagi,et al.  Prediction of bathymetry from satellite altimeter based gravity in the Arabian Sea: Mapping of two unnamed deep seamounts , 2012, Int. J. Appl. Earth Obs. Geoinformation.

[17]  Rudi Goossens,et al.  Remote sensing as a tool for bathymetric mapping of coral reefs in the Red Sea (Hurghada, Egypt) , 2003 .

[18]  Dawn J. Wright,et al.  Derivation and Integration of Shallow-Water Bathymetry: Implications for Coastal Terrain Modeling and Subsequent Analyses , 2008 .

[19]  Seamus Coveney,et al.  Integration Potential of INFOMAR Airborne LIDAR Bathymetry with External Onshore LIDAR Data Sets , 2011 .

[20]  S. Ustin,et al.  Influence of atmospheric and sea-surface corrections on retrieval of bottom depth and reflectance using a semi-analytical model: a case study in Kaneohe Bay, Hawaii. , 2008, Applied optics.

[21]  Paul Harris,et al.  Estimating Freshwater Acidification Critical Load Exceedance Data for Great Britain Using Space-Varying Relationship Models , 2011 .

[22]  Stuart R. Phinn,et al.  Environmental and Sensor Limitations in Optical Remote Sensing of Coral Reefs: Implications for Monitoring and Sensor Design , 2012, Remote. Sens..

[23]  Vittorio E. Brando,et al.  Evaluation of Multi-Resolution Satellite Sensors for Assessing Water Quality and Bottom Depth of Lake Garda , 2014, Sensors.

[24]  Martin Charlton,et al.  The Use of Geographically Weighted Regression for Spatial Prediction: An Evaluation of Models Using Simulated Data Sets , 2010 .

[25]  Sebastian Rößler Methods for multitemporal mapping of submerged aquatic macrophytes using multi- and hperspectral remote sensing , 2014 .

[26]  J. Chilès,et al.  Geostatistics: Modeling Spatial Uncertainty , 1999 .

[27]  Eulogio Pardo-Igúzquiza,et al.  EMLK2D: a computer program for spatial estimation using empirical maximum likelihood kriging , 2005, Comput. Geosci..

[28]  Martin Charlton,et al.  The comap as a diagnostic tool for non-stationary kriging models , 2013, Int. J. Geogr. Inf. Sci..

[29]  Thomas Heege,et al.  Bathymetry mapping and sea floor classification using multispectral satellite data and standardized physics-based data processing , 2011, Remote Sensing.

[30]  Carol A. Gotway,et al.  Statistical Methods for Spatial Data Analysis , 2004 .

[31]  David R. Lyzenga,et al.  Shallow-water bathymetry using combined lidar and passive multispectral scanner data , 1985 .

[32]  Martin Charlton,et al.  Enhancements to a geographically weighted principal component analysis in the context of an application to an environmental data set , 2015 .

[33]  R. Olea Geostatistics for Natural Resources Evaluation By Pierre Goovaerts, Oxford University Press, Applied Geostatistics Series, 1997, 483 p., hardcover, $65 (U.S.), ISBN 0-19-511538-4 , 1999 .

[34]  John D. Hedley,et al.  Technical note: Simple and robust removal of sun glint for mapping shallow‐water benthos , 2005 .

[35]  Jin Li,et al.  Spatial interpolation methods applied in the environmental sciences: A review , 2014, Environ. Model. Softw..

[36]  R. Dirks,et al.  Classification of bottom composition and bathymetry of shallow waters by passive remote sensing , 1986 .

[37]  Ap van Dongeren,et al.  Beach Wizard: Nearshore bathymetry estimation through assimilation of model computations and remote observations , 2008 .

[38]  G. Doxania,et al.  SHALLOW-WATER BATHYMETRY OVER VARIABLE BOTTOM TYPES USING MULTISPECTRAL WORLDVIEW-2 IMAGE , 2012 .

[39]  V. Klemas,et al.  Subsurface and deeper ocean remote sensing from satellites: An overview and new results , 2014 .

[40]  A. H. Benny,et al.  Satellite Imagery as an Aid to Bathymetric Charting in the Red Sea , 1983 .

[41]  Anthony M. Filippi,et al.  Geographically Adaptive Inversion Model for Improving Bathymetric Retrieval From Satellite Multispectral Imagery , 2014, IEEE Transactions on Geoscience and Remote Sensing.

[42]  Jouni Pulliainen,et al.  Landsat ETM+ Images in the Estimation of Seasonal Lake Water Quality in Boreal River Basins , 2008, Environmental management.

[43]  Nathalie Pettorelli,et al.  The application of remote sensing for marine protected area management , 2014 .

[44]  Edwin K. McCaffrey A Review of the Bathymetric Swath Survey System , 1981 .

[45]  Özçelik Ceyhun,et al.  Remote sensing of water depths in shallow waters via artificial neural networks , 2010 .

[46]  Stuart R. Phinn,et al.  Integrating Quickbird Multi-Spectral Satellite and Field Data: Mapping Bathymetry, Seagrass Cover, Seagrass Species and Change in Moreton Bay, Australia in 2004 and 2007 , 2011, Remote. Sens..

[47]  Tiit Kutser,et al.  The possibility of using the Landsat image archive for monitoring long time trends in coloured dissolved organic matter concentration in lake waters , 2012 .

[48]  Juha Hyyppä,et al.  Seamless Mapping of River Channels at High Resolution Using Mobile LiDAR and UAV-Photography , 2013, Remote. Sens..

[49]  Alan E. Gelfand,et al.  Bayesian dynamic modeling for large space-time datasets using Gaussian predictive processes , 2012, J. Geogr. Syst..

[50]  Steffen Roth,et al.  Functional analysis by trophic guilds of macrobenthic community structure in Dublin Bay, Ireland , 1998 .

[51]  A. Stewart Fotheringham,et al.  Links, comparisons and extensions of the geographically weighted regression model when used as a spatial predictor , 2011 .

[52]  Daniel Rodríguez-Pérez,et al.  Fast and low-cost method for VBES bathymetry generation in coastal areas , 2012 .

[53]  G. Fader,et al.  An overview of seabed-mapping technologies in the context of marine habitat classification , 2000 .

[54]  Jay Gao Bathymetric mapping by means of remote sensing : methods , accuracy and limitations , 2009 .

[55]  Amitansu Pattanaik,et al.  Estimation of Shallow Water Bathymetry Using IRS-Multispectral Imagery of Odisha Coast, India , 2015 .

[56]  Grégoire Mariethoz,et al.  Bathymetry fusion using multiple-point geostatistics: Novelty and challenges in representing non-stationary bedforms , 2013, Environ. Model. Softw..

[57]  D. Lyzenga Remote sensing of bottom reflectance and water attenuation parameters in shallow water using aircraft and Landsat data , 1981 .

[58]  Yi Ma,et al.  Bathymetric ability of SPOT-5 multi-spectral image in shallow coastal water , 2010, 2010 18th International Conference on Geoinformatics.

[59]  Hongxing Liu,et al.  Automated Derivation of Bathymetric Information from Multi-Spectral Satellite Imagery Using a Non-Linear Inversion Model , 2008 .