Fine-Grained Socioeconomic Prediction from Satellite Images with
Distributional Adjustment
- URL: http://arxiv.org/abs/2308.15979v2
- Date: Mon, 4 Sep 2023 10:45:58 GMT
- Title: Fine-Grained Socioeconomic Prediction from Satellite Images with
Distributional Adjustment
- Authors: Donghyun Ahn, Minhyuk Song, Seungeon Lee, Yubin Choi, Jihee Kim,
Sangyoon Park, Hyunjoo Yang and Meeyoung Cha
- Abstract summary: We propose a method that assigns a socioeconomic score to each satellite image by capturing the distributional behavior observed in larger areas.
We train an ordinal regression scoring model and adjust the scores to follow the common power law within and across regions.
Our method also demonstrates robust performance in districts with uneven development, suggesting its potential use in developing countries.
- Score: 14.076490368696508
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: While measuring socioeconomic indicators is critical for local governments to
make informed policy decisions, such measurements are often unavailable at
fine-grained levels like municipality. This study employs deep learning-based
predictions from satellite images to close the gap. We propose a method that
assigns a socioeconomic score to each satellite image by capturing the
distributional behavior observed in larger areas based on the ground truth. We
train an ordinal regression scoring model and adjust the scores to follow the
common power law within and across regions. Evaluation based on official
statistics in South Korea shows that our method outperforms previous models in
predicting population and employment size at both the municipality and grid
levels. Our method also demonstrates robust performance in districts with
uneven development, suggesting its potential use in developing countries where
reliable, fine-grained data is scarce.
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