CONTRIBUTION OF REMOTE SENSING TO THE STUDY OF MANGROVES: A BIBLIOMETRIC REVIEW (2019-2024)

Authors

DOI:

https://doi.org/10.15628/geoconexes.2025.18706

Keywords:

remote sensing, vegetation index, mangrove

Abstract

The study highlights the importance of mangroves as vital coastal ecosystems, highlighting their global distribution and relevance in climate change mitigation, coastal protection and provision of socioeconomic services. However, they face significant threats due to human activity, such as deforestation and uncontrolled urbanization. Remote Sensing, especially through vegetation indices, is an essential tool for monitoring and conserving mangroves, providing valuable data for analysis and decision-making. The research reviews the existing literature on the use of Remote Sensing in mangrove analysis, highlighting the importance of these indices in identifying mangrove species. The bibliometric analysis identified only 32 Brazilian studies on the subject, in the analyzed period, despite the significant extension of mangroves along the country's coastline. Vegetation indices play a fundamental role in the identification and characterization of mangroves, contributing to the monitoring of the health and extension of these ecosystems. The diversity of indices reflects the continuous advancement and innovation in the field of Remote Sensing, highlighting the importance of a multifaceted approach to understanding and monitoring terrestrial ecosystems on a global scale.

Author Biographies

Marcos Leonardo Ferreira dos Santos, Federal University of Campina Grande

He holds a degree in Higher Technology Course in Geoprocessing from the Federal Institute of Education, Science and Technology of Paraíba - IFPB (2010), a degree in Environmental Engineering from the International Faculty of Paraíba (2015) and a master's degree in Development and Environment from the Federal University of Paraíba (2018). He is currently a doctoral student in the Postgraduate Program in Natural Resources Engineering and Management and a laboratory technician/area: geoprocessing at the Federal University of Campina Grande. He has experience in the area of ​​Geosciences, with an emphasis on Geotechnologies, working mainly on the following topics: geoprocessing, GIS, environment and conservation units.

Janaína Barbosa da Silva, Federal University of Campina Grande

She is an Associate Professor at the Federal University of Campina Grande, Academic Unit of Geography in the area of ​​Cartography, Geoprocessing and Remote Sensing. Leader of the research group Cartography, Geoprocessing and Remote Sensing -CAGEOS certified by CNPQ. She has a bachelor's degree (2003), master's degree (2006), PhD in Geography (March-2012) and Post-doctorate (2019/20) in Geography, all from the Federal University of Pernambuco. She has experience in the area of ​​Geosciences, with an emphasis on Biogeography, Remote Sensing and Environment, working mainly on the following themes: environment, estuary, mangrove, environmental impacts and environmental degradation. Permanent member of the Postgraduate Program in Engineering and Natural Resources Management at UFCG. Master's and doctoral advisor, where she teaches subjects in Remote Sensing; Applied Remote Sensing and Mangrove Ecology I and II.

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Published

04/10/2025

How to Cite

SANTOS, Marcos Leonardo Ferreira dos; BARBOSA DA SILVA, Janaína. CONTRIBUTION OF REMOTE SENSING TO THE STUDY OF MANGROVES: A BIBLIOMETRIC REVIEW (2019-2024). Geoconexões, [S. l.], n. 21, p. e1870616, 2025. DOI: 10.15628/geoconexes.2025.18706. Disponível em: https://www2.ifrn.edu.br/ojs/index.php/geoconexoes/article/view/18706. Acesso em: 9 oct. 2025.

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