Reducing the labeling burden in time-series mapping using Common Ground: a semi-automated approach to tracking changes in land cover and species over time
Geethen Singh, Jasper A Slingsby, Tamara B Robinson, Glenn Moncrieff

TL;DR
This paper introduces 'Common Ground', a semi-supervised method that leverages stable regions over time to improve land cover and species classification in remote sensing data, reducing the need for repeated manual labeling.
Contribution
The paper presents a novel semi-supervised framework that uses temporally stable regions to enhance multi-temporal classification without updating labels, outperforming traditional methods.
Findings
21-40% accuracy improvement in invasive species mapping
10-16% higher accuracy than gold-standard approaches
2% accuracy increase in broad land cover classification
Abstract
Reliable classification of Earth Observation data depends on consistent, up-to-date reference labels. However, collecting new labelled data at each time step remains expensive and logistically difficult, especially in dynamic or remote ecological systems. As a response to this challenge, we demonstrate that a model with access to reference data solely from time step t0 can perform competitively on both t0 and a future time step t1, outperforming models trained separately on time-specific reference data (the gold standard). This finding suggests that effective temporal generalization can be achieved without requiring manual updates to reference labels beyond the initial time step t0. Drawing on concepts from change detection and semi-supervised learning (SSL), the most performant approach, "Common Ground", uses a semi-supervised framework that leverages temporally stable regions-areas…
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Taxonomy
TopicsRemote Sensing in Agriculture · Remote-Sensing Image Classification · Species Distribution and Climate Change
