Seeking Consensus: Geometric-Semantic On-the-Fly Recalibration for Open-Vocabulary Remote Sensing Semantic Segmentation
arXiv cs.AI / 4/30/2026
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Key Points
- The paper introduces SeeCo (Seeking Consensus), a training-free plug-and-play method for open-vocabulary semantic segmentation (OVSS) in remote sensing that addresses issues caused by static inference across scenes.
- SeeCo recalibrates an arbitrary OVSS model during inference by pursuing two forms of consensus: geometric consensus learning from multi-view consistency and semantic consensus learning using textual-description adaptive calibration.
- An online consensus injector (OCI) is used to inject both consensus signals, which the authors claim reduces under-activation of relevant regions and mitigates semantic bias.
- Experiments across eight remote-sensing OVSS benchmarks reportedly show consistent performance improvements, suggesting the approach is effective and broadly applicable.
- The key contribution is dynamic, per-scene semantic-geometric alignment without requiring any special training pipeline.
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