Scale effects-aware bottom-up population estimation using weakly supervised learning

Autor: Jing Xia, Rui Li, Xinrui Liu, Guangyu Liu, Mingjun Peng
Jazyk: angličtina
Rok vydání: 2024
Předmět:
Zdroj: International Journal of Digital Earth, Vol 17, Iss 1 (2024)
Druh dokumentu: article
ISSN: 17538947
1753-8955
1753-8947
DOI: 10.1080/17538947.2024.2341788
Popis: ABSTRACTFine-scale population estimation (FPE) is crucial for urban management. After training, the bottom-up FPE models can be applied independently of census data. However, given the lack of real fine-scale population data, the existing bottom-up methods typically apply models trained on coarse-grained census data to FPE directly, causing estimation bias induced by scale effects. Traffic analysis zones (TAZs) balance geo-semantics and fine granularity, but their potential as population analysis units has not been fully exploited. Hence, we developed a weakly-supervised TAZ-scale bottom-up population estimation method (WSTP). Specifically, to mitigate scale effects, the weakly-supervised training procedure involves fine-scale feature input, model prediction, spatial aggregation, and coarse-scale supervision is designed to ensure that WSTP consistently focuses on FPE throughout the training and prediction phases. To enable weakly-supervised training using census data, we treated TAZs as graph nodes and designed a Spatial Aggregation Layer to aggregate TAZ-scale population predictions into communities. Given the diverse distribution patterns across age groups, we decomposed the FPE task by age groups. The experiments showed that WSTP significantly outperformed the baselines with R2 values of 0.821 and 0.785 at the community and TAZ scales, respectively, indicating that WSTP can mitigate scale effects and produce high-resolution, accurate population data.
Databáze: Directory of Open Access Journals