Enhancing Active Learning for Sentinel 2 Imagery through Contrastive Learning and Uncertainty Estimation
In this paper, we introduce a novel method designed to enhance label efficiency in satellite imagery analysis by integrating semi-supervised learning (SSL) with active learning strategies. Our approach utilizes contrastive learning together with uncertainty estimations via Monte Carlo Dropout (MC Dr...
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Zusammenfassung: | In this paper, we introduce a novel method designed to enhance label
efficiency in satellite imagery analysis by integrating semi-supervised
learning (SSL) with active learning strategies. Our approach utilizes
contrastive learning together with uncertainty estimations via Monte Carlo
Dropout (MC Dropout), with a particular focus on Sentinel-2 imagery analyzed
using the Eurosat dataset. We explore the effectiveness of our method in
scenarios featuring both balanced and unbalanced class distributions. Our
results show that the proposed method performs better than several other
popular methods in this field, enabling significant savings in labeling effort
while maintaining high classification accuracy. These findings highlight the
potential of our approach to facilitate scalable and cost-effective satellite
image analysis, particularly advantageous for extensive environmental
monitoring and land use classification tasks. |
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DOI: | 10.48550/arxiv.2405.13285 |