Modeling forest biomass using Very-High-Resolution data—Combining textural, spectral and photogrammetric predictors derived from spaceborne stereo images
Published 2015 View Full Article
- Home
- Publications
- Publication Search
- Publication Details
Title
Modeling forest biomass using Very-High-Resolution data—Combining textural, spectral and photogrammetric predictors derived from spaceborne stereo images
Authors
Keywords
-
Journal
European Journal of Remote Sensing
Volume 48, Issue 1, Pages 245-261
Publisher
Informa UK Limited
Online
2015-06-23
DOI
10.5721/eujrs20154814
References
Ask authors/readers for more resources
Related references
Note: Only part of the references are listed.- Presencia, abundancia y asociatividad de Citronella mucronata en bosques secundarios de Nothofagus obliqua en la precordillera de Curicó, región del Maule, Chile
- (2015) Patricio Corvalán et al. BOSQUE
- Importance of sample size, data type and prediction method for remote sensing-based estimations of aboveground forest biomass
- (2014) F.E. Fassnacht et al. REMOTE SENSING OF ENVIRONMENT
- Assessment of Cartosat-1 and WorldView-2 stereo imagery in combination with a LiDAR-DTM for timber volume estimation in a highly structured forest in Germany
- (2013) C. Straub et al. FORESTRY
- Pine plantation structure mapping using WorldView-2 multispectral image
- (2013) Ali Shamsoddini et al. INTERNATIONAL JOURNAL OF REMOTE SENSING
- Biomass functions for the two alien tree species Prunus serotina Ehrh. and Robinia pseudoacacia L. in floodplain forests of Northern Italy
- (2012) Peter Annighöfer et al. EUROPEAN JOURNAL OF FOREST RESEARCH
- A meta-analysis of terrestrial aboveground biomass estimation using lidar remote sensing
- (2012) S.G. Zolkos et al. REMOTE SENSING OF ENVIRONMENT
- Improved Forest Biomass and Carbon Estimations Using Texture Measures from WorldView-2 Satellite Data
- (2012) Sandra Eckert Remote Sensing
- Predicting forest structural parameters using the image texture derived from WorldView-2 multispectral imagery in a dryland forest, Israel
- (2011) Ibrahim Ozdemir et al. International Journal of Applied Earth Observation and Geoinformation
- Estimation of tropical rain forest aboveground biomass with small-footprint lidar and hyperspectral sensors
- (2011) Matthew L. Clark et al. REMOTE SENSING OF ENVIRONMENT
- Model-assisted regional forest biomass estimation using LiDAR and InSAR as auxiliary data: A case study from a boreal forest area
- (2011) Erik Næsset et al. REMOTE SENSING OF ENVIRONMENT
- Measuring the prediction error. A comparison of cross-validation, bootstrap and covariance penalty methods
- (2010) Simone Borra et al. COMPUTATIONAL STATISTICS & DATA ANALYSIS
- Non-parametric prediction and mapping of standing timber volume and biomass in a temperate forest: application of multiple optical/LiDAR-derived predictors
- (2010) H. Latifi et al. FORESTRY
- Status and future of laser scanning, synthetic aperture radar and hyperspectral remote sensing data for forest biomass assessment
- (2010) Barbara Koch ISPRS JOURNAL OF PHOTOGRAMMETRY AND REMOTE SENSING
- An outlook for sustainable forest bioenergy production in the Lake States
- (2009) Dennis R. Becker et al. ENERGY POLICY
- Aboveground biomass assessment in Colombia: A remote sensing approach
- (2009) Jesús A. Anaya et al. FOREST ECOLOGY AND MANAGEMENT
- Characterizing forest succession with lidar data: An evaluation for the Inland Northwest, USA
- (2009) Michael J. Falkowski et al. REMOTE SENSING OF ENVIRONMENT
- Mapping the height and above‐ground biomass of a mixed forest using lidar and stereo Ikonos images
- (2008) B. St‐Onge et al. INTERNATIONAL JOURNAL OF REMOTE SENSING
- Integrating waveform lidar with hyperspectral imagery for inventory of a northern temperate forest
- (2007) J ANDERSON et al. REMOTE SENSING OF ENVIRONMENT
Find Funding. Review Successful Grants.
Explore over 25,000 new funding opportunities and over 6,000,000 successful grants.
ExploreCreate your own webinar
Interested in hosting your own webinar? Check the schedule and propose your idea to the Peeref Content Team.
Create Now