Water (Mar 2022)

Multi-Band Bathymetry Mapping with Spiking Neuron Anomaly Detection

  • J. Lawen,
  • K. Lawen,
  • G. Salman,
  • A. Schuster

DOI
https://doi.org/10.3390/w14050810
Journal volume & issue
Vol. 14, no. 5
p. 810

Abstract

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The developed method extracts bathymetry distributions from multiple satellite image bands. The automated remote sensing function is sparsely coded and combines spiking neural net anomaly filtration, spline, and multi-band fittings. Survey data were used to identify an activation threshold, decay rate, spline fittings, and multi-band weighting factors. Errors were computed for remotely sensed Landsat satellite images. Multi-band fittings achieved an average error of 25.3 cm. This proved sufficiently accurate to automatically extract shorelines to eliminate land areas in bathymetry mapping.

Keywords