Improving EO Foundation Models with Confidence Assessment for enhanced Semantic segmentation
Confidence assessments of semantic segmentation algorithms are important. Ideally, deep learning models should have the ability to predict in advance whether their output is likely to be incorrect. Assessing the confidence levels of model predictions in Earth Observation (EO) classification is essen...
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Zusammenfassung: | Confidence assessments of semantic segmentation algorithms are important.
Ideally, deep learning models should have the ability to predict in advance
whether their output is likely to be incorrect. Assessing the confidence levels
of model predictions in Earth Observation (EO) classification is essential, as
it can enhance semantic segmentation performance and help prevent further
exploitation of the results in case of erroneous prediction. The model we
developed, Confidence Assessment for enhanced Semantic segmentation (CAS),
evaluates confidence at both the segment and pixel levels, providing both
labels and confidence scores as output. Our model, CAS, identifies segments
with incorrect predicted labels using the proposed combined confidence metric,
refines the model, and enhances its performance. This work has significant
applications, particularly in evaluating EO Foundation Models on semantic
segmentation downstream tasks, such as land cover classification using
Sentinel-2 satellite data. The evaluation results show that this strategy is
effective and that the proposed model CAS outperforms other baseline models. |
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DOI: | 10.48550/arxiv.2406.18279 |