A Robust Dual-Mode Machine Learning Framework for Classifying Deforestation Patterns in Amazon Native Lands

Author:

Rodrigues Julia1ORCID,Dias Mauricio Araújo2ORCID,Negri Rogério3ORCID,Hussain Sardar Muhammad4ORCID,Casaca Wallace1ORCID

Affiliation:

1. São Paulo State University (UNESP), Institute of Biosciences, Humanities and Exact Sciences (IBILCE), São José do Rio Preto 15054-000, Brazil

2. São Paulo State University (UNESP), Faculty of Science and Technology (FCT), Presidente Prudente 19060-900, Brazil

3. São Paulo State University (UNESP), Science and Technology Institute (ICT), São José dos Campos 12245-000, Brazil

4. Balochistan University of Information Technology, Engineering and Management Sciences (BUITEMS), Faculty of Basic Sciences (FBS), Quetta 87300, Pakistan

Abstract

The integrated use of remote sensing and machine learning stands out as a powerful and well-established approach for dealing with various environmental monitoring tasks, including deforestation detection. In this paper, we present a tunable, data-driven methodology for assessing deforestation in the Amazon biome, with a particular focus on protected conservation reserves. In contrast to most existing works from the specialized literature that typically target vast forest regions or privately used lands, our investigation concentrates on evaluating deforestation in particular, legally protected areas, including indigenous lands. By integrating the open data and resources available through the Google Earth Engine, our framework is designed to be adaptable, employing either anomaly detection methods or artificial neural networks for classifying deforestation patterns. A comprehensive analysis of the classifiers’ accuracy, generalization capabilities, and practical usage is provided, with a numerical assessment based on a case study in the Amazon rainforest regions of São Félix do Xingu and the Kayapó indigenous reserve.

Funder

São Paulo State University

São Paulo Research Foundation

National Council for Scientific and Technological Development

Publisher

MDPI AG

Reference70 articles.

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2. Müller, C. (2020). Brazil and the Amazon Rainforest: Deforestation, Biodiversity and Cooperation with the EU and International Forums, European Parliamentary Research Service.

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4. Understanding Brazil’s catastrophic fires: Causes, consequences and policy needed to prevent future tragedies;Pivello;Perspect. Ecol. Conserv.,2021

5. PRODES (2024, March 03). Prodes and Deter: Get to Know These Strategic Systems in the Fight against Deforestation in the Amazon. Available online: https://infoamazonia.org/en/2022/02/15/prodes-and-deter-systems-against-deforestation-amazon.

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