Coupling potential of ICESat/GLAS and SRTM for the discrimination of forest landscape types in French Guiana
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Nicolas Baghdadi | Jean-Stéphane Bailly | Ibrahim Fayad | Valéry Gond | Nicolas Barbier | Mahmoud El Hajj | Frédéric Fabre
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