Treffer: Extraction of remote sensing-based forest management units in tropical forests

Title:
Extraction of remote sensing-based forest management units in tropical forests
Source:
Remote sensing of environment. 130:1-10
Publisher Information:
New York, NY: Elsevier, 2013.
Publication Year:
2013
Physical Description:
print, 3/4 p
Original Material:
INIST-CNRS
Subject Terms:
Agronomy, agriculture, phytopathology, Agronomie, agriculture, phytopathologie, Ecology, Ecologie, Environment, Environnement, Geology, Géologie, Geophysics, Géophysique, Oceanography, Océanographie, Sciences exactes et technologie, Exact sciences and technology, Terre, ocean, espace, Earth, ocean, space, Sciences de la terre, Earth sciences, Géophysique interne, Internal geophysics, Géophysique appliquée, Applied geophysics, Sciences biologiques et medicales, Biological and medical sciences, Sciences biologiques fondamentales et appliquees. Psychologie, Fundamental and applied biological sciences. Psychology, Ecologie animale, vegetale et microbienne, Animal, plant and microbial ecology, Généralités. Techniques, General aspects. Techniques, Télédétection, cartes de végétation, Teledetection and vegetation maps, Carte, maps, Mapa, Extraction, extraction, Forêt tropicale, Tropical forest, Bosque tropical, Gestion durable, Sustainable management, Gestión sostenible, Gestion forestière, Forest management, Administración forestal, Modèle empirique, Empirical model, Modelo empírico, Méthode aéroportée, airborne methods, Método aerotransportado, Observation aérienne, Aerial survey, Observación aérea, Peuplement forestier, Forest stand, Rodal forestal, Planification, planning, Planificación, Prédiction, Prediction, Predicción, Radar optique, Lidar, Radar óptico, Segmentation, segmentation, Tiers Monde, Third World, Tige, Stem, Tallo, Traitement informatique, Computerized processing, Tratamiento informático, Télédétection, remote sensing, Detección a distancia, Végétation, vegetation, Vegetación, Zone tropicale, tropical zone, Zona tropical, ALOS AVNIR-2, ALS, Airborne CIR, Stand delineation, Tropical forests
Document Type:
Fachzeitschrift Article
File Description:
text
Language:
English
Author Affiliations:
European Forest Institute (EFI), Torikatu 34, 80100 Joensuu, Finland
University of Eastern Finland, Faculty of Science and Forestry, School of Forest Sciences, P.O. Box 111, 80101 Joensuu, Finland
Finnish Forest Research Institute (METLA), Yliopistokatu 6, 80100 Joensuu, Finland
ISSN:
0034-4257
Rights:
Copyright 2014 INIST-CNRS
CC BY 4.0
Sauf mention contraire ci-dessus, le contenu de cette notice bibliographique peut être utilisé dans le cadre d’une licence CC BY 4.0 Inist-CNRS / Unless otherwise stated above, the content of this bibliographic record may be used under a CC BY 4.0 licence by Inist-CNRS / A menos que se haya señalado antes, el contenido de este registro bibliográfico puede ser utilizado al amparo de una licencia CC BY 4.0 Inist-CNRS
Notes:
Animal, vegetal and microbial ecology

Earth sciences
Accession Number:
edscal.27129278
Database:
PASCAL Archive

Weitere Informationen

As a spatial source of forest data, the forest stand is the basic unit for forest management and planning. Computerized segmentation of a diverse range of remote sensing material has been studied for delineating stands in various forest types, but is relatively rare under tropical conditions. In line with REDD+, which advocates sustainable forest management in tropical developing countries, we report here on the delineation of forest stands in Laos using data from Airborne Laser Scanning, Airborne CIR and ALOS AVNIR-2. Rather than using the spectral layers alone, the segmentation was applied to wall-to-wall maps of predicted values from empirical models that retrieve forest stem volume and basal area. The homogeneity of 96 sets of segmentation categorized according to the hierarchical mean sizes of the segments was evaluated quantitatively in terms of the AICvar index and qualitatively by eye. The results show that the quality and performance of the empirical models are duly reflected in the quality and performance of the segmentation, and that the most competitive delineations are provided by models that involve ALS. Finally, the future prospects for using this empirical model-based segmentation approach to detect and quantify deforestation, or even forest degradation, and thereby to provide further support for the development of REDD methodology, are discussed.