Publications des scientifiques de l'IRD

Tapamo H., Mfopou A., Ngonmang B., Couteron Pierre, Monga Olivier. (2014). Linear vs non-linear learning methods - A comparative study for forest above ground biomass, estimation from texture analysis of satellite images. Revue Africaine de Recherche en Informatique et Mathématiques Appliquées, 18, 139-156. ISSN 1638-5713.

Titre du document
Linear vs non-linear learning methods - A comparative study for forest above ground biomass, estimation from texture analysis of satellite images
Année de publication
2014
Type de document
Article
Auteurs
Tapamo H., Mfopou A., Ngonmang B., Couteron Pierre, Monga Olivier
Source
Revue Africaine de Recherche en Informatique et Mathématiques Appliquées, 2014, 18, 139-156 ISSN 1638-5713
The aboveground biomass estimation is an important question in the scope of Reducing Emission from Deforestation and Forest Degradation (REDD framework of the UNCCC). It is particularly challenging for tropical countries because of the scarcity of accurate ground forest inventory data and of the complexity of the forests. Satellite-borne remote sensing can help solve this problem considering the increasing availability of optical very high spatial resolution images that provide information on the forest structure via texture analysis of the canopy grain. For example, the FOTO (FOurier Texture Ordination) proved relevant for forest biomass prediction in several tropical regions. It uses PCA and linear regression and, in this paper, we suggest applying classification methods such as k-NN (k-nearest neighbors), SVM (support vector machines) and Random Forests to texture descriptors extracted from images via Fourier spectra. Experiments have been carried out on simulated images produced by the software DART (Discrete Anisotropic Radiative Transfer) in reference to information (3D stand mockups) from forests of DRC (Democratic Republic of Congo), CAR (Central African Republic) and Congo. On this basis, we show that some classification techniques may yield a gain in prediction accuracy of 18 to 20%
Plan de classement
Etudes, transformation, conservation du milieu naturel [082] ; Informatique [122] ; Télédétection [126]
Localisation
Fonds IRD [F B010093211]
Identifiant IRD
fdi:010093211
Contact