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Due Diligence for Deforestation-Free Supply Chains with Copernicus Sentinel-2 Imagery and Machine Learning

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posted on 2024-04-19, 11:46 authored by Ivan Reading, Konstantina Bika, Toby Drakesmith, Chris McNeill, Sarah Cheesbrough, Justin Byrne, Heiko BalzterHeiko Balzter
At COP26, the Glasgow Leaders Declaration committed to ending deforestation by 2030. Implementing deforestation-free supply chains is of growing importance to importers and exporters but challenging due to the complexity of supply chains for agricultural commodities which are driving tropical deforestation. Monitoring tools are needed that alert companies of forest losses around their source farms. ForestMind has developed compliance monitoring tools for deforestation-free supply chains. The system delivers reports to companies based on automated satellite image analysis of forest loss around farms. We describe an algorithm based on the Python for Earth Observation (PyEO) package to deliver near-real-time forest alerts from Sentinel-2 imagery and machine learning. A Forest Analyst interprets the multi-layer raster analyst report and creates company reports for monitoring supply chains. We conclude that the ForestMind extension of PyEO with its hybrid change detection from a random forest model and NDVI differencing produces actionable farm-scale reports in support of the EU Deforestation Regulation. The user accuracy of the random forest model was 96.5% in Guatemala and 93.5% in Brazil. The system provides operational insights into forest loss around source farms in countries from which commodities are imported.

Funding

European Space Agency and UK Space Agency, ForestMind contract AO/1-9305/18/NL/CLP

Natural Environment Research Council (NERC) under the National Centre for Earth Observation (NCEO)

History

Author affiliation

College of Science & Engineering/Geography, Geology & Environment

Version

  • VoR (Version of Record)

Published in

Forests

Volume

15

Issue

4

Pagination

617 - 617

Publisher

MDPI AG

eissn

1999-4907

Copyright date

2024

Available date

2024-04-19

Language

en

Deposited by

Professor Heiko Balzter

Deposit date

2024-04-10

Data Access Statement

The datasets presented in this article are not readily available because the data are commercially sensitive to the data owners. Requests to access the datasets should be directed to the authors.

Rights Retention Statement

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