DocumentCode
3069544
Title
SAR ocean image inversion using neural network
Author
Forgia, V.L. ; Nirchio, F. ; Pasquariello, G. ; Speranza, A.
Author_Institution
Istituto Elaborazione Segnali ed Immagini, Bari, Italy
Volume
2
fYear
34881
fDate
10-14 Jul1995
Firstpage
945
Abstract
The objective of this paper is to present a methodological approach devoted to the sea state parameters extraction from ERS-1 SAR data. Wave parameters (direction and wavelength) retrieval is not a straightforward task, due to the nonlinearity of mapping the sea surface into the detected image. To overcome these difficulties a neural network approach has been tested. A SAR ocean image simulator has been used to create a set of image windows for the learning of a multilayers network and the trained network has been applied to a set of independent examples corresponding to various wave directions and wavelengths. The results, obtained on simulated data, seems to be encouraging and independent of linearity or nonlinearity of the wave data
Keywords
feedforward neural nets; geophysical signal processing; geophysics computing; ocean waves; oceanographic techniques; radar applications; radar imaging; remote sensing; remote sensing by radar; spaceborne radar; synthetic aperture radar; ERS-1; SAR ocean image inversion; direction; feedforward neural net; measurement technique; multilayer network; neural network; nonlinearity; ocean wave; parameters extraction; radar imaging; radar remote sensing; retrieval method; sea state; sea surface; spaceborne radar; synthetic aperture radar; trained network; wavelength; Extraterrestrial measurements; Image retrieval; Linearity; Multi-layer neural network; Neural networks; Oceans; Parameter extraction; Remote monitoring; Sea measurements; Sea surface; Surface waves; Testing; Weather forecasting;
fLanguage
English
Publisher
ieee
Conference_Titel
Geoscience and Remote Sensing Symposium, 1995. IGARSS '95. 'Quantitative Remote Sensing for Science and Applications', International
Conference_Location
Firenze
Print_ISBN
0-7803-2567-2
Type
conf
DOI
10.1109/IGARSS.1995.521104
Filename
521104
Link To Document