Machine Learning Approaches for Estimating Forest Stand Height Using Plot-Based Observations and Airborne LiDAR Data
暂无分享,去创建一个
Jungho Im | Lindi J. Quackenbush | J. Im | Junghee Lee | Kyung-Min Kim | Jung-Hee Lee | Kyungmin Kim
[1] F. Hall,et al. Importance of structure and its measurement in quantifying function of forest ecosystems , 2010 .
[2] C. Margules,et al. Indicators of Biodiversity for Ecologically Sustainable Forest Management , 2000 .
[3] Jungho Im,et al. Forest Biomass and Carbon Stock Quantification Using Airborne LiDAR Data: A Case Study Over Huntington Wildlife Forest in the Adirondack Park , 2014, IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing.
[4] Brian Brisco,et al. Wetland classification in Newfoundland and Labrador using multi-source SAR and optical data integration , 2017 .
[5] Juha Hyyppä,et al. Comparison of Area-Based and Individual Tree-Based Methods for Predicting Plot-Level Forest Attributes , 2010, Remote. Sens..
[6] J. Eitel,et al. Quantifying aboveground forest carbon pools and fluxes from repeat LiDAR surveys , 2012 .
[7] Asghar Fallah,et al. Forest attribute imputation using machine-learning methods and ASTER data: comparison of k-NN, SVR and random forest regression algorithms , 2012 .
[8] J. Canadell,et al. Managing Forests for Climate Change Mitigation , 2008, Science.
[9] Mariana Belgiu,et al. Random forest in remote sensing: A review of applications and future directions , 2016 .
[10] Sylvie Durrieu,et al. PTrees: A point-based approach to forest tree extraction from lidar data , 2014, Int. J. Appl. Earth Obs. Geoinformation.
[11] Chih-Jen Lin,et al. LIBSVM: A library for support vector machines , 2011, TIST.
[12] M. Wulder,et al. Forest inventory height update through the integration of lidar data with segmented Landsat imagery , 2003 .
[13] Chi-Kuei Wang,et al. Integration of full-waveform LiDAR and hyperspectral data to enhance tea and areca classification , 2016 .
[14] Michael A. Wulder,et al. Modeling Stand Height, Volume, and Biomass from Very High Spatial Resolution Satellite Imagery and Samples of Airborne LiDAR , 2013, Remote. Sens..
[15] Nicholas C. Coops,et al. Forest inventory stand height estimates from very high spatial resolution satellite imagery calibrated with lidar plots , 2013 .
[16] Chaoyang Fang,et al. Evaluation of Goddard’s LiDAR, hyperspectral, and thermal data products for mapping urban land-cover types , 2018 .
[17] B. Locatelli,et al. Forests and Climate Change in Latin America: Linking Adaptation and Mitigation , 2011 .
[18] Jungho Im,et al. An improved tree crown delineation method based on live crown ratios from airborne LiDAR data , 2016 .
[19] Alexander J. Smola,et al. Support Vector Regression Machines , 1996, NIPS.
[20] Martin Isenburg,et al. Effect of slope on treetop detection using a LiDAR Canopy Height Model , 2015 .
[21] Saso Dzeroski,et al. Estimating vegetation height and canopy cover from remotely sensed data with machine learning , 2010, Ecol. Informatics.
[22] Leon N. Cooper,et al. Training Data Selection for Support Vector Machines , 2005, ICNC.
[23] Leo Breiman,et al. Random Forests , 2001, Machine Learning.
[24] D. Donoghue,et al. Using LiDAR to compare forest height estimates from IKONOS and Landsat ETM+ data in Sitka spruce plantation forests , 2006 .
[25] Rei Sonobe,et al. Assessing the suitability of data from Sentinel-1A and 2A for crop classification , 2017 .
[26] E. Næsset. Practical large-scale forest stand inventory using a small-footprint airborne scanning laser , 2004 .
[27] S. Franklin,et al. Deciduous tree species classification using object-based analysis and machine learning with unmanned aerial vehicle multispectral data , 2018 .
[28] J. Hyyppä,et al. Review of methods of small‐footprint airborne laser scanning for extracting forest inventory data in boreal forests , 2008 .
[29] E. Næsset,et al. Estimating tree heights and number of stems in young forest stands using airborne laser scanner data , 2001 .
[30] Michael G. Wing,et al. Airborne Light Detection and Ranging (LiDAR) for Individual Tree Stem Location, Height, and Biomass Measurements , 2011, Remote. Sens..
[31] O. Mutanga,et al. Empirical Prediction of Leaf Area Index (LAI) of Endangered Tree Species in Intact and Fragmented Indigenous Forests Ecosystems Using WorldView-2 Data and Two Robust Machine Learning Algorithms , 2016, Remote. Sens..
[32] E. Næsset. Predicting forest stand characteristics with airborne scanning laser using a practical two-stage procedure and field data , 2002 .
[33] Alberto García-Martín,et al. Use of low point density ALS data to estimate stand-level structural variables in Mediterranean Aleppo pine forest , 2016 .
[34] Vladimir N. Vapnik,et al. The Nature of Statistical Learning Theory , 2000, Statistics for Engineering and Information Science.
[35] Jungho Im,et al. Support vector machines in remote sensing: A review , 2011 .
[36] Dieu Tien Bui,et al. Biomass estimation of Sonneratia caseolaris (l.) Engler at a coastal area of Hai Phong city (Vietnam) using ALOS-2 PALSAR imagery and GIS-based multi-layer perceptron neural networks , 2017 .
[37] Lauchlan H. Fraser,et al. A comparison of geographic datasets and field measurements to model soil carbon using random forests and stepwise regressions (British Columbia, Canada) , 2017 .
[38] Jungho Im,et al. Hyperspectral remote sensing analysis of short rotation woody crops grown with controlled nutrient and irrigation treatments , 2009 .
[39] Michael A. Wulder,et al. Characterizing stand-level forest canopy cover and height using Landsat time series, samples of airborne LiDAR, and the Random Forest algorithm , 2015 .
[40] Juha Hyyppä,et al. An International Comparison of Individual Tree Detection and Extraction Using Airborne Laser Scanning , 2012, Remote. Sens..
[41] A. Sumida,et al. A comparison between various definitions of forest stand height and aerodynamic canopy height , 2010 .
[42] J. Means,et al. Predicting forest stand characteristics with airborne scanning lidar , 2000 .
[43] Yong Q. Tian,et al. Estimating Basal Area and Stem Volume for Individual Trees from Lidar Data , 2007 .
[44] Barbara Koch,et al. Quantifying the influence of slope, aspect, crown shape and stem density on the estimation of tree height at plot level using lidar and InSAR data , 2008 .
[45] Tian Gao,et al. The role of forest stand structure as biodiversity indicator , 2014 .
[46] R. Valbuena,et al. Fusion of airborne LiDAR and multispectral sensors reveals synergic capabilities in forest structure characterization , 2016 .
[47] G. Sun,et al. Forest Management Challenges for Sustaining Water Resources in the Anthropocene , 2016 .