Global High Categorical Resolution Land Cover Mapping via Weak Supervision
Xin-Yi Tong, Runmin Dong, Xiao Xiang Zhu

TL;DR
This paper introduces a weakly supervised domain adaptation method using prototypes to improve high-resolution, fine-grained land cover mapping from satellite images, achieving over 80% accuracy across diverse regions and sensors.
Contribution
It proposes the PRE approach that leverages class prototypes for pseudo-label rectification and expansion, enabling detailed land cover mapping with sparse labels.
Findings
Achieved over 80% accuracy in global land cover mapping.
Demonstrated cross-sensor and cross-continent applicability.
Reduced dependency on high-quality annotations.
Abstract
Land cover information is indispensable for advancing the United Nations' sustainable development goals, and land cover mapping under a more detailed category system would significantly contribute to economic livelihood tracking and environmental degradation measurement. However, the substantial difficulty in acquiring fine-grained training data makes the implementation of this task particularly challenging. Here, we propose to combine fully labeled source domain and weakly labeled target domain for weakly supervised domain adaptation (WSDA). This is beneficial as the utilization of sparse and coarse weak labels can considerably alleviate the labor required for precise and detailed land cover annotation. Specifically, we introduce the Prototype-based pseudo-label Rectification and Expansion (PRE) approach, which leverages the prototypes (i.e., the class-wise feature centroids) as the…
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Taxonomy
TopicsRemote Sensing and Land Use · Remote Sensing in Agriculture · Remote-Sensing Image Classification
