Author:
Soto P. J.,Costa G. A. O. P.,Ortega M. X.,Bermudez J. D.,Feitosa R. Q.
Abstract
Abstract. Deep learning methods are known to demand large amounts of labeled samples for training. For remote sensing applications such as change detection, coping with that demand is expensive and time-consuming. This work aims at investigating a noisy-label-based weak supervised method in the context of a deforestation mapping application, characterized by a high class imbalance between the classes of interest, i.e., deforestation and no-deforestation. The study sites correspond to different regions in the Amazon and Brazilian Cerrado biomes. To mitigate the lack of ground-truth labeled training samples, we devised an unsupervised pseudo-labeling scheme based on the Change Vector Analysis technique. The experimental results indicate that the proposed approach can improve the accuracy of deforestation detection applications.
Cited by
2 articles.
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1. Estimation of Annual Deforestation Using Random Forest;2024 IEEE Conference on Computer Applications (ICCA);2024-03-16
2. Weakly Supervised Domain Adversarial Neural Network for Deforestation Detection in Tropical Forests;IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing;2023