Intro: Crop segmentation
Sentinel-2 mission
Labels
Setting the task
parcel-wise / pixel-wise?
in-season?
which year data can be accessed during training? (more questions)
Replicating the benchmark
models
training loops and details
Results + plots
confusion matrix
precision/recall
patch-wise scores
Class distribution
(class distribution plot)
Class weights formula
tuned the hyperparams to get $\alpha=0.1$
Grassland experiment
Data splits
Temporal generalisation experiment
mention and quantify difference in train/test distributions
Map histogram
Temporal with 8 classes
In-season segmentation experiment
Data preprocessing
patches are split into 6x6 subpatches
Experiment with subpatch center regions
Ignored class in the loss
Crop presence experiment
What is active sampling
diagram: difference from active learning
Data flow diagram
Our strategies
CCM
Loss
RHO-Loss
random
Results
training plot, confusion matrix
Learnings
Guidelines
Conclusion: summary of contributions
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