Title of article
Neural network classification of multibeam backscatter and bathymetry data from Stanton Bank (Area IV)
Author/Authors
Ivor Marsh، نويسنده , , Colin Brown، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2009
Pages
8
From page
1269
To page
1276
Abstract
The paper presents an approach to automated seabed classification that incorporates spatially coincident bathymetric and backscatter data collected in multibeam surveys. The classification algorithm is a self-organising artificial neural network that can be used as a rapid classifier of grids of bathymetry (and attributes such as slope and roughness) and backscatter strength (and textures), or in a mode that uses both datasets at beam level to construct high spatial resolution classifications that preserve angular information in the backscatter. The latter mode requires processing of backscatter angular responses in a manner consistent with the essential physics of acoustic scattering from the seafloor.
Keywords
Self-organising map , Swath acoustics , Seabed characterisation
Journal title
Applied Acoustics
Serial Year
2009
Journal title
Applied Acoustics
Record number
1171277
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