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Modelling Stand Variables of Beech Coppice Forest Using Spectral Sentinel 2A Data and the Machine Learning Approach

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Figure

TABLE 2. Spectral bands of Sentinel-2 MSI sensor.
tAbLE 3. Feature selection.
tAbLE 4. Evaluation results (MAE, RMSE, RMSE%).
FIGUrE 3. Relationship between the observed and estimated values for growing stock in (a) the reference dataset and (b) the validation dataset.

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