Canopy cover estimation in lowland forest in South Sumatera, using LiDAR and landsat 8 OLI imagery

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Abstract

Canopy cover is one of the most important variables in ecology, hydrology, and forest management, and useful as a basis for defining forests. LiDAR is an active remote sensing method that provides the height information of an object in three-dimensional space. The method allows for the mapping of terrain, canopy height and cover. Its only setback is that it has to be integrated with Landsat to cover a large area. The main objective of this study is to generate the canopy cover estimation model using Landsat 8 OLI and LiDAR. Landsat 8 OLI vegetation indices and LiDAR-derived canopy cover estimation, through First Return Canopy Index (FRCI) method, were used to obtain a regression model. The performance of this model was then assessed using correlation, aggregate deviation, and raster display. Lastly, the best canopy cover estimation was obtained using equation, FRCI = 2.22 + 5.63Ln(NDVI), with R2 at 0.663, standard deviation at 0.161, correlation between actual and predicted value at 0.663, aggregate deviation at -0.182 and error at 56.10%.

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Saleh, M. B., Dewi, R. W., Prasetyo, L. B., & Santi, N. A. (2021). Canopy cover estimation in lowland forest in South Sumatera, using LiDAR and landsat 8 OLI imagery. Jurnal Manajemen Hutan Tropika, 27(1), 50–58. https://doi.org/10.7226/JTFM.27.1.50

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