Real-time GeoAI for High-resolution Mapping and Segmentation of Arctic Permafrost Features
Real-time GeoAI for High-resolution Mapping and Segmentation of Arctic Permafrost Features
This paper introduces a real-time GeoAI workflow for large-scale image analysis and the segmentation of Arctic permafrost features at a fine-granularity. Very high-resolution (0.5m) commercial imagery is used in this analysis. To achieve real-time prediction, our workflow employs a lightweight, deep learning-based instance segmentation model, SparseInst, which introduces and uses Instance Activation Maps to accurately locate the position of objects within the image scene. Experimental results show that the model can achieve better accuracy of prediction at a much faster inference speed than the popular Mask-RCNN model.
Wenwen Li、Sizhe Wang、Chandi Witharana、Chia-Yu Hsu、Anna Liljedahl
测绘学遥感技术自然地理学
Wenwen Li,Sizhe Wang,Chandi Witharana,Chia-Yu Hsu,Anna Liljedahl.Real-time GeoAI for High-resolution Mapping and Segmentation of Arctic Permafrost Features[EB/OL].(2023-06-08)[2025-05-07].https://arxiv.org/abs/2306.05341.点此复制
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