Interior Alaska’s rapidly thawing permafrost poses risks to environmental systems and infrastructure, challenging municipal planning. As part of a larger project examining frozen commons, McGrath, Alaska, officials and tribal council members requested a permafrost map. This paper presents ground thermal monitoring (October 2023 to March 2025) and imagery-derived land cover and permafrost/seasonal freezing maps developed after testing machine learning and contextual feature methods. Over the two years of observation, ground temperature warmed 0.26 °C year−1 at 1.5 m depth. A high-accuracy land cover classification was generated to project ground thermal conditions across the community. Several supervised machine learning algorithms were compared with and without contextual features on a Satellite Pour l’Observation de la Terre (SPOT) scene in ArcGIS Pro. Per-pixel classification performed better given the contiguous spectral features, and contextual features did not improve overall accuracy. Instead, a random forest classifier that yielded the highest overall accuracy was used to generate a 1.5 m resolution permafrost/seasonal freezing map. Maps and thermal data can inform community frozen commons decision-making, and methods can be repeated to monitor regional change. Discussion of results highlights potential permafrost mapping applications, particularly of Gabor and mean contextual features with object segmentation.
Mnev et al. (Sat,) studied this question.
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