Sentinel-2 Data in an Evaluation of the Impact of the Disturbances on Forest Vegetation
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Premysl Stych | Natalia Kobliuk | Jan Svoboda | Josef Lastovicka | Radovan Hladky | Daniel Paluba | Pavel Svec | R. Hladky | Josef Laštovička | P. Štych | P. Švec | Daniel Paluba | Natalia Kobliuk | Jana Svoboda
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