A generalised algorithm for oil spill detection on ERS and envisat SAR images

F. Nirchio, C. Marzo, P. Trivero, W. Biamino, S. Di Tomaso, A. Escalada

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Abstract

Different approaches have been proposed for detecting and classifying oil spills on SAR data. Several of these are based on training datasets which are used to characterize this phenomenon statistically. In case of images employed for the analysis having different pixel spacing or radiometric resolution to those used in the training set, a new classification template is required. A completely new training dataset and an algorithm optimisation are also needed. In the present paper we present an oil spill detection system which was originally developed for ERS. This has been generalised and put to use for processing ENVISAT data also. Performance of the classification process has been tested using a set of confirmed slicks, which were present on both ERS and ENVISAT images simultaneously. The results are here presented and discussed.

Lingua originaleInglese
RivistaEuropean Space Agency, (Special Publication) ESA SP
Numero di pubblicazioneSP-636
Stato di pubblicazionePubblicato - lug 2007
Pubblicato esternamente
EventoEnvisat Symposium 2007 - Montreux, Switzerland
Durata: 23 apr 200727 apr 2007

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