This work compares recent deep learning models on crop type classification on raw and preprocessed Sentinel 2 data and qualitatively shows how self-attention scores focus selectively on few classification-relevant observations.
Authors
Marc Rußwurm
5 papers
Marco Körner
4 papers
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