Weakly Supervised Framework Considering Multi-temporal Information for Large-scale Cropland Mapping with Satellite Imagery
Yuze Wang, Aoran Hu, Ji Qi, Yang Liu, Chao Tao

TL;DR
This paper proposes a weakly supervised deep learning framework that leverages multi-temporal satellite imagery and global land cover data to efficiently map large-scale croplands with reduced labeling effort.
Contribution
It introduces a novel multi-temporal, weakly supervised approach combining supervised and unsupervised signals, improving cropland mapping accuracy with less reliance on precise labels.
Findings
Effective in three diverse study areas.
Robust under data scarcity conditions.
Enhances cropland mapping accuracy.
Abstract
Accurately mapping large-scale cropland is crucial for agricultural production management and planning. Currently, the combination of remote sensing data and deep learning techniques has shown outstanding performance in cropland mapping. However, those approaches require massive precise labels, which are labor-intensive. To reduce the label cost, this study presented a weakly supervised framework considering multi-temporal information for large-scale cropland mapping. Specifically, we extract high-quality labels according to their consistency among global land cover (GLC) products to construct the supervised learning signal. On the one hand, to alleviate the overfitting problem caused by the model's over-trust of remaining errors in high-quality labels, we encode the similarity/aggregation of cropland in the visual/spatial domain to construct the unsupervised learning signal, and take…
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Taxonomy
TopicsRemote Sensing and Land Use
