A Bayesian approach to seafloor classification using multi-beam echo-sounder backscatter data |
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Authors: | Dick G. Simons |
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Affiliation: | Delft Institute of Earth Observation and Space Systems, Delft University of Technology, 2629 HS Delft, The Netherlands |
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Abstract: | Seafloor classification using acoustic remote sensing techniques is an attractive approach due to its high-coverage capabilities and limited costs. The multi-beam echo-sounder (MBES) system provides high-resolution bathymetry and backscatter information with 100% coverage. In this paper, we present a seafloor classification method that employs the MBES backscatter data. The method uses the averaged backscatter data per beam. It, therefore, is independent on the quality of the MBES calibration. Also, its performance is insensitive to seafloor type variation along the MBES swathe and corrections for the angular dependence of the backscatter are not needed. The method accounts for the ping-to-ping variability of the backscatter intensity. It estimates both the number of seafloor types present in the survey area and the probability density function for the backscatter strength at a certain angle for each of the seafloor types. Application of the method to MBES backscatter data acquired in a well-known test area in the North Sea shows very good agreement with available ground truth. The method’s discriminatory performance for this area is demonstrated to be comparable to that of taking samples of the sediment. All seafloor types known to be present in the area are resolved for. Application of the method to the Stanton bank data set shows clearly separable areas that differ in seafloor composition. |
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Keywords: | Benthic habitat mapping Seafloor classification Multi-beam echo-sounder Backscatter Bayesian decision rule Cleaver bank Stanton bank |
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