INTEGRATING ETHNOFORESTRY AND REMOTE SENSING FOR A HOLISTIC ASSESSMENT OF FOREST HEALTH AND COMMUNITY WELL-BEING IN PAPUA

Christian Soleman (1), Novaldi Laudi Angrianto (2), Olivia Marie Caesaria Kesauliya (3)
(1) Universitas Papua Manokwari - Papua Barat, Indonesia,
(2) Universitas Papua, Manokwari - Papua Barat, Indonesia,
(3) Universitas Papua, Manokwari - Papua Barat, Indonesia, Indonesia

Abstract

Conventional remote sensing often fails to capture the full picture of forest health, ignoring the nuanced knowledge of indigenous communities intrinsically linked to the environment. This study's objective was to develop a holistic framework for assessing forest health by integrating indigenous Papuan ethnoforestry knowledge with advanced remote sensing techniques, and analyzing the link to community well-being. A mixed-methods approach was employed, combining participatory mapping and interviews (collecting local indicators) with time-series analysis of Landsat imagery (deriving biophysical metrics like NDVI). The findings showed a strong positive correlation between community perception and satellite indices. Crucially, the integrated approach revealed subtle degradation (e.g., loss of culturally significant species) undetectable by remote sensing alone. A direct link was established between this degradation and a decline in community well-being (e.g., access to traditional medicine). This integrated framework provides a more accurate and socially relevant assessment, enhancing monitoring, empowering local communities for co-management, and ensuring sustainable livelihoods.

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Authors

Christian Soleman
Christiansoleman001@gmail.com (Primary Contact)
Novaldi Laudi Angrianto
Olivia Marie Caesaria Kesauliya
Soleman, C., Angrianto, N. L. ., & Kesauliya, O. M. C. . (2025). INTEGRATING ETHNOFORESTRY AND REMOTE SENSING FOR A HOLISTIC ASSESSMENT OF FOREST HEALTH AND COMMUNITY WELL-BEING IN PAPUA. Journal of Selvicoltura Asean, 2(5), 259–274. https://doi.org/10.70177/jsa.v2i5.2488

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