Communication Dans Un Congrès Année : 2024

Predicting Socio-economic Indicator Variations with Satellite Image Time Series and Transformer

Résumé

Monitoring local socio-economic variations is essential for tracking progress toward sustainable development goals. However, measuring these variations can be challenging, as it requires data collection at least twice, which is both expensive and time-consuming. To address this issue, researchers have proposed remote sensing and deep learning methods to predict socio-economic indicators. However, subtracting two predicted socio-economic indicators from different dates leads to inaccurate results. We propose a novel method for predicting socio-economic variations using satellite image time series to achieve more reliable predictions. Our method leverages both spatial and temporal information to enhance the final prediction. In our experiments, we observed that it outperforms state-of-the-art methods.
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Dates et versions

lirmm-04895134 , version 1 (17-01-2025)
lirmm-04895134 , version 2 (20-01-2025)

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  • HAL Id : lirmm-04895134 , version 1

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Robin Jarry, Marc Chaumont, Laure Berti-Equille, Gérard Subsol. Predicting Socio-economic Indicator Variations with Satellite Image Time Series and Transformer. MVEO 2024 - Workshop on Machine Vision for Earth Observation and Environment Monitoring, Nov 2024, Glasgow, United Kingdom. ⟨lirmm-04895134v1⟩
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