LandSegmenter: Towards a Flexible Foundation Model for Land Use and Land Cover Mapping
PositiveArtificial Intelligence
The recent publication of 'LandSegmenter' marks a pivotal advancement in Land Use and Land Cover (LULC) mapping, a critical task in Earth Observation. Traditional LULC models are often constrained by their specific modalities and the extensive labeled data they require, which can be impractical in remote sensing. LandSegmenter proposes a solution by integrating a novel framework that leverages the LAnd Segment (LAS) dataset, which is large-scale and multi-modal, primarily composed of weak labels from existing LULC products. This innovative approach not only reduces the reliance on costly manual annotations but also facilitates large-scale training of foundation models across diverse LULC domains. Furthermore, LandSegmenter incorporates a unique model architecture that integrates remote sensing-specific adapters and a text encoder, alongside a class-wise confidence-guided fusion strategy for outputs. This comprehensive framework promises to enhance the flexibility and effectiveness of L…
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