Above ground biomass and tree species richness estimation with airborne lidar in tropical Ghana forests
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Qi Chen | Dario Papale | Piermaria Corona | Gaia Vaglio Laurin | Nicola Puletti | Riccardo Valentini | R. Valentini | P. Corona | D. Papale | Qi Chen | G. V. Laurin | N. Puletti
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