Prioritizing Potential Wetland Areas via Region-to-Region Knowledge Transfer and Adaptive Propagation
Yoonhyuk Choi, Reepal Shah, John Sabo, K. Selcuk Candan, Huan Liu

TL;DR
This paper introduces a novel method combining region-to-region knowledge transfer with adaptive spatial propagation to improve wetland area identification in data-scarce regions, validated through extensive experiments.
Contribution
It proposes a domain disentanglement approach for effective knowledge transfer and an adaptive propagation mechanism for spatial data enrichment in wetland prediction.
Findings
Enhanced wetland prediction accuracy over baselines.
Robustness and scalability demonstrated through experiments.
Each module significantly contributes to the overall performance.
Abstract
Wetlands are important to communities, offering benefits ranging from water purification, and flood protection to recreation and tourism. Therefore, identifying and prioritizing potential wetland areas is a critical decision problem. While data-driven solutions are feasible, this is complicated by significant data sparsity due to the low proportion of wetlands (3-6\%) in many areas of interest in the southwestern US. This makes it hard to develop data-driven models that can help guide the identification of additional wetland areas. To solve this limitation, we propose two strategies: (1) The first of these is knowledge transfer from regions with rich wetlands (such as the Eastern US) to sparser regions (such as the Southwestern area with few wetlands). Recognizing that these regions are likely to be very different from each other in terms of soil characteristics, population…
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Taxonomy
TopicsIndoor and Outdoor Localization Technologies
