TL;DR
This paper introduces PSRNet, a one-shot transfer learning framework that effectively predicts fine-grained population distribution in cities with limited data, outperforming existing methods by over 25% in accuracy.
Contribution
The paper proposes a novel one-shot transfer learning approach, PSRNet, for population mapping that leverages minimal target city data to transfer knowledge from source cities.
Findings
PSRNet reduces RMSE and MAE by over 25% compared to baselines.
Experiments on 4 cities demonstrate significant accuracy improvements.
The framework effectively transfers spatial-temporal knowledge across cities.
Abstract
Fine-grained population distribution data is of great importance for many applications, e.g., urban planning, traffic scheduling, epidemic modeling, and risk control. However, due to the limitations of data collection, including infrastructure density, user privacy, and business security, such fine-grained data is hard to collect and usually, only coarse-grained data is available. Thus, obtaining fine-grained population distribution from coarse-grained distribution becomes an important problem. To tackle this problem, existing methods mainly rely on sufficient fine-grained ground truth for training, which is not often available for the majority of cities. That limits the applications of these methods and brings the necessity to transfer knowledge between data-sufficient source cities to data-scarce target cities. In knowledge transfer scenario, we employ single reference fine-grained…
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