Middle East AI

This Week arXiv

Causal inference for climate change events from satellite image time series using computer vision and deep learning

arXiv · · Significant research

Summary

The paper proposes a method for causal inference using satellite image time series to determine the impact of interventions on climate change, focusing on quantifying deforestation due to human causes. The method uses computer vision and deep learning to detect forest tree coverage levels over time and Bayesian structural causal models to estimate counterfactuals. The framework is applied to analyze deforestation levels before and after the hyperinflation event in Brazil in the Amazon rainforest region.

Keywords

causal inference · satellite image · climate change · deforestation · computer vision

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