Global Detection of Long-Term (1982-2017) Burned Area with AVHRR-LTDR Data
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Emilio Chuvieco | Rubén Ramo | Gonzalo Otón | Joshua Lizundia-Loiola | E. Chuvieco | Joshua Lizundia-Loiola | Gonzalo Otón | R. Ramo | G. Otón
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