A Deep Learning Approach for Population Estimation from Satellite Imagery
Caleb Robinson, Fred Hohman, Bistra Dilkina

TL;DR
This paper presents a deep learning model that estimates high-resolution population distribution from satellite imagery, offering a scalable alternative to traditional census methods with comparable accuracy.
Contribution
The paper introduces a convolutional neural network approach for detailed population estimation from satellite data, demonstrating its effectiveness and interpretability at a fine spatial resolution.
Findings
Model estimates align with US Census county data
Predictions are directly interpretable from satellite images
Approach offers a scalable alternative to traditional censuses
Abstract
Knowing where people live is a fundamental component of many decision making processes such as urban development, infectious disease containment, evacuation planning, risk management, conservation planning, and more. While bottom-up, survey driven censuses can provide a comprehensive view into the population landscape of a country, they are expensive to realize, are infrequently performed, and only provide population counts over broad areas. Population disaggregation techniques and population projection methods individually address these shortcomings, but also have shortcomings of their own. To jointly answer the questions of "where do people live" and "how many people live there," we propose a deep learning model for creating high-resolution population estimations from satellite imagery. Specifically, we train convolutional neural networks to predict population in the USA at a…
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