Increasing Spatial Detail of Burned Scar Maps Using IRS-AWiFS Data for Mediterranean Europe
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Pieter Kempeneers | Peter Strobl | Fernando Sedano | Jesús San Miguel | Daniel O. McInerney | P. Strobl | F. Sedano | P. Kempeneers | D. McInerney | J. Miguel
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