Résumé
A new scheme to perform stateless ice/sea discrimination in ERS scatterometer data is proposed. This method consists in combining several methods proposed in the literature using a Bayesian framework. Each of the combined method is first reviewed in a consistent framework. In particular, the ice/sea probability according to each individual criterion is extracted using a neural network. The proposed method is shown to provide acceptable results even without taking into account historic data, i.e. without performing temporal averaging.
langue originale | Anglais |
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Numéro d'article | 566 |
Pages (de - à) | 877-884 |
Nombre de pages | 8 |
journal | European Space Agency, (Special Publication) ESA SP |
Numéro de publication | 572 |
état | Publié - 2005 |
Evénement | 2004 Envisat and ERS Symposium - Salzburg, Autriche Durée: 6 sept. 2004 → 10 sept. 2004 |