Published June 20, 2024 | Version main
Software Open

Source code: DeepWealth: A Generalizable Open-Source Deep Learning Framework using Satellite Images for Well-Being Estimation

  • 1. ROR icon Universidade de São Paulo
  • 2. ROR icon Terrestrial Ecosystem Research Network
  • 3. ROR icon Institut de Recherche pour le Développement
  • 4. ROR icon National Institute for Space Research
  • 5. ROR icon Research Institute for Humanity and Nature
  • 6. ROR icon Marine Biodiversity Exploitation and Conservation

Description

The aim of the DeepWealth package is to provide a generalizable Deep Learning framework for the use of remote sensing in poverty estimation. The combination of Deep Learning and Earth Observation data is increasingly being used to estimate socioeconomic conditions at regional and global scales. The proposed framework aligns with the Sustainable Development Goal SDG1 of ending poverty. The framework provides open-source data, code, and training models (checkpoints) for reproducibility and replicability.

Notes

This research is product of the PARSEC group funded by the Belmont Forum as part of its Collaborative Research Action (CRA) on Science-Driven e-Infrastructures Innovation (SEI) with funding from the ANR, FAPESP, NSF and JST with the synthesis centre CESAB of the French Foundation for Research on Biodiversity.

Files

PARSECworld/DeepWealth-main.zip

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Additional details

Related works

Is part of
Journal article: 10.1016/j.softx.2024.101785 (DOI)
Is supplement to
Software: https://github.com/PARSECworld/DeepWealth/tree/main (URL)

Funding

U.S. National Science Foundation
Belmont Forum Collaborative Research: Building New Tools for Data Sharing and Re-use through a Transnational Investigation of the Socioeconomic Impacts of Protected Areas (PARSEC) 1929464
Fundação de Amparo à Pesquisa do Estado de São Paulo
Transição para sustentabilidade e o nexo água-agricultura-energia: explorando uma abordagem integradora com casos de estudo nos biomas Cerrado e Caatinga 2017/22269-2
Fundação de Amparo à Pesquisa do Estado de São Paulo
Building new tools for data sharing and re-use through a transnational investigation of the socioeconomic impacts of protected areas (PARSEC) 2018/24017–3
Fundação de Amparo à Pesquisa do Estado de São Paulo
Evaluation the effects of Brazilian protected areas in local communities based on the use and re-use of biological, environmental and socioeconomic data 2020/03514–9

Software

Repository URL
https://github.com/PARSECworld/DeepWealth
Programming language
Python , R