Fusion of airborne LiDAR data and hyperspectral imagery for aboveground and belowground forest biomass estimation
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Xiaohuan Xi | Dailiang Peng | Shezhou Luo | Cheng Wang | Sheng Nie | Feifei Pan | Haiming Qin | Cheng Wang | F. Pan | D. Peng | Shezhou Luo | X. Xi | Sheng Nie | Jie Zou | Haiming Qin | Jie Zou | S. Nie
[1] K. Itten,et al. Estimation of LAI and fractional cover from small footprint airborne laser scanning data based on gap fraction , 2006 .
[2] Aaron Weiskittel,et al. Evaluation of alternative methods for using LiDAR to predict aboveground biomass in mixed species and structurally complex forests in northeastern North America , 2015, Math. Comput. For. Nat. Resour. Sci..
[3] Txomin Hermosilla,et al. Analysis of the Influence of Plot Size and LiDAR Density on Forest Structure Attribute Estimates , 2014 .
[4] Geoffrey G. Parker,et al. The importance of spatial detail: Assessing the utility of individual crown information and scaling approaches for lidar-based biomass density estimation , 2015 .
[5] C. Jordan. Derivation of leaf-area index from quality of light on the forest floor , 1969 .
[6] Peter Bunting,et al. Retrieving forest biomass through integration of CASI and LiDAR data , 2008 .
[7] G. Foody,et al. Predictive relations of tropical forest biomass from Landsat TM data and their transferability between regions , 2003 .
[8] L. Bruzzone,et al. Tree species classification in the Southern Alps based on the fusion of very high geometrical resolution multispectral/hyperspectral images and LiDAR data , 2012 .
[9] Florian Siegert,et al. Above ground biomass estimation across forest types at different degradation levels in Central Kalimantan using LiDAR data , 2012, Int. J. Appl. Earth Obs. Geoinformation.
[10] M. d'Oliveira,et al. Estimating forest biomass and identifying low-intensity logging areas using airborne scanning lidar in Antimary State Forest, Acre State, Western Brazilian Amazon , 2012 .
[11] C. Woodcock,et al. The factor of scale in remote sensing , 1987 .
[12] W. Cohen,et al. Lidar Remote Sensing for Ecosystem Studies , 2002 .
[13] David R. Anderson,et al. Model selection and multimodel inference : a practical information-theoretic approach , 2003 .
[14] Geoff West,et al. Reflecting conifer phenology using mobile terrestrial LiDAR: A case study of Pinus sylvestris growing under the Mediterranean climate in Perth, Australia , 2016 .
[15] Terje Gobakken,et al. Comparing regression methods in estimation of biophysical properties of forest stands from two different inventories using laser scanner data , 2005 .
[16] K. Lim,et al. Estimation of above ground forest biomass from airborne discrete return laser scanner data using canopy-based quantile estimators , 2004 .
[17] A. P. Abaimov,et al. Above- and belowground biomass and primary productivity of a Larix gmelinii stand near Tura, central Siberia. , 1999, Tree physiology.
[18] Fabian Ewald Fassnacht,et al. Forest structure modeling with combined airborne hyperspectral and LiDAR data , 2012 .
[19] Jin Chen,et al. Estimating aboveground biomass of grassland having a high canopy cover: an exploratory analysis of in situ hyperspectral data , 2009 .
[20] Terje Gobakken,et al. Effects of field plot size on prediction accuracy of aboveground biomass in airborne laser scanning-assisted inventories in tropical rain forests of Tanzania , 2015, Carbon Balance and Management.
[21] Patrick D. Johnson,et al. Investigating RaDAR–LiDAR synergy in a North Carolina pine forest , 2007 .
[22] Xiaohuan Xi,et al. Estimating leaf area index of maize using airborne full-waveform lidar data , 2016 .
[23] Nicholas C. Coops,et al. Using Small-Footprint Discrete and Full-Waveform Airborne LiDAR Metrics to Estimate Total Biomass and Biomass Components in Subtropical Forests , 2014, Remote. Sens..
[24] F. Baret,et al. HIGH SPEcrRAL RESOLUTION : DETERMINATION OF SPEcrRAL SHIFTS BETWEEN THE RED AND INFRARED , 2012 .
[25] E. Kevin Kelloway,et al. Using Mplus for Structural Equation Modeling: A Researcher's Guide , 2014 .
[26] I. Woodhouse,et al. Using satellite radar backscatter to predict above‐ground woody biomass: A consistent relationship across four different African landscapes , 2009 .
[27] Terje Gobakken,et al. Modeling Aboveground Biomass in Dense Tropical Submontane Rainforest Using Airborne Laser Scanner Data , 2015, Remote. Sens..
[28] Nicholas C. Coops,et al. Using multi-frequency radar and discrete-return LiDAR measurements to estimate above-ground biomass and biomass components in a coastal temperate forest , 2012 .
[29] Guoqing Sun,et al. Forest biomass mapping from lidar and radar synergies , 2011 .
[30] Emilio Chuvieco,et al. Estimation of leaf area index and covered ground from airborne laser scanner (Lidar) in two contrasting forests , 2004 .
[31] Chaoyang Wu,et al. Airborne LiDAR technique for estimating biomass components of maize: A case study in Zhangye City, Northwest China , 2015 .
[32] A. Skidmore,et al. Narrow band vegetation indices overcome the saturation problem in biomass estimation , 2004 .
[33] Qihao Weng,et al. Scale Issues in Remote Sensing , 2014 .
[34] R. Dubayah,et al. Lidar Remote Sensing for Forestry , 2000, Journal of Forestry.
[35] E. Næsset,et al. Estimation of above- and below-ground biomass across regions of the boreal forest zone using airborne laser , 2008 .
[36] K. O. Niemann,et al. Simulated impact of sample plot size and co-registration error on the accuracy and uncertainty of LiDAR-derived estimates of forest stand biomass , 2011 .
[37] Andrew K. Skidmore,et al. Estimation of green grass/herb biomass from airborne hyperspectral imagery using spectral indices and partial least squares regression , 2007, Int. J. Appl. Earth Obs. Geoinformation.
[38] R. Valentini,et al. Above ground biomass estimation in an African tropical forest with lidar and hyperspectral data , 2014 .
[39] David Saah,et al. Aboveground Forest Biomass Estimation with Landsat and LiDAR Data and Uncertainty Analysis of the Estimates , 2012 .
[40] Zheng Niu,et al. Estimating the Leaf Area Index, height and biomass of maize using HJ-1 and RADARSAT-2 , 2013, Int. J. Appl. Earth Obs. Geoinformation.
[41] G. Asner,et al. Fusing small-footprint waveform LiDAR and hyperspectral data for canopy-level species classification and herbaceous biomass modeling in savanna ecosystems , 2011 .
[42] S. Goetz,et al. A meta-analysis of terrestrial aboveground biomass estimation using lidar remote sensing , 2013 .
[43] Sumith Pathirana,et al. Estimating above-ground biomass by fusion of LiDAR and multispectral data in subtropical woody plant communities in topographically complex terrain in North-eastern Australia , 2014, Journal of Forestry Research.
[44] Sandra Englhart,et al. Aboveground biomass retrieval in tropical forests — The potential of combined X- and L-band SAR data use , 2011 .
[45] J. Bryan Blair,et al. Mapping biomass and stress in the Sierra Nevada using lidar and hyperspectral data fusion , 2011 .
[46] Qing Xiao,et al. Heihe Watershed Allied Telemetry Experimental Research (HiWATER): Scientific Objectives and Experimental Design , 2013 .
[47] Laura Chasmer,et al. Towards a universal lidar canopy height indicator , 2006 .
[48] L. Monika Moskal,et al. Modeling approaches to estimate effective leaf area index from aerial discrete-return LIDAR , 2009 .
[49] Sorin C. Popescu,et al. Fusion of lidar and multispectral data to quantify salt marsh carbon stocks , 2014 .
[50] D. Roberts,et al. Estimation of tropical rain forest aboveground biomass with small-footprint lidar and hyperspectral sensors , 2011 .
[51] Eike Luedeling,et al. Partial Least Squares Regression for analyzing walnut phenology in California , 2012 .
[52] R. Nelson,et al. Comparison of precision of biomass estimates in regional field sample surveys and airborne LiDAR-assisted surveys in Hedmark County, Norway , 2013 .
[53] Delphis F. Levia,et al. Estimation of big sagebrush leaf area index with terrestrial laser scanning , 2016 .
[54] S. Hensley,et al. A study of forest biomass estimates from lidar in the northern temperate forests of New England , 2013 .
[55] R. Houghton,et al. Aboveground Forest Biomass and the Global Carbon Balance , 2005 .
[56] A. Huete,et al. A Modified Soil Adjusted Vegetation Index , 1994 .
[57] Kaiguang Zhao,et al. Lidar-based mapping of leaf area index and its use for validating GLOBCARBON satellite LAI product in a temperate forest of the southern USA , 2009 .
[58] Jacob Strunk,et al. Effects of lidar pulse density and sample size on a model-assisted approach to estimate forest inventory variables , 2012 .
[59] Valerie A. Thomas,et al. Spatial modelling of the fraction of photosynthetically active radiation absorbed by a boreal mixedwood forest using a lidar–hyperspectral approach , 2006 .
[60] C. Tucker. Red and photographic infrared linear combinations for monitoring vegetation , 1979 .
[61] F. M. Danson,et al. Estimating biomass carbon stocks for a Mediterranean forest in central Spain using LiDAR height and intensity data , 2010 .
[62] Erxue Chen,et al. Above-Ground Biomass and Biomass Components Estimation Using LiDAR Data in a Coniferous Forest , 2013 .
[63] J. A. Schell,et al. Monitoring vegetation systems in the great plains with ERTS , 1973 .
[64] Qi Chen,et al. Modeling and Mapping Agroforestry Aboveground Biomass in the Brazilian Amazon Using Airborne Lidar Data , 2015, Remote. Sens..
[65] G. Rondeaux,et al. Optimization of soil-adjusted vegetation indices , 1996 .
[66] J. Chen,et al. Effects of LiDAR point density, sampling size and height threshold on estimation accuracy of crop biophysical parameters. , 2016, Optics express.
[67] Andrew K. Skidmore,et al. Allometric equations for estimating the above-ground biomass in tropical lowland Dipterocarp forests , 2009 .
[68] Zheng Niu,et al. Synergistic application of geometric and radiometric features of LiDAR data for urban land cover mapping. , 2015, Optics express.
[69] S. Popescu,et al. Satellite lidar vs. small footprint airborne lidar: Comparing the accuracy of aboveground biomass estimates and forest structure metrics at footprint level , 2011 .
[70] Xiaohuan Xi,et al. Estimating FPAR of maize canopy using airborne discrete-return LiDAR data. , 2014, Optics express.
[71] G. Asner,et al. A universal airborne LiDAR approach for tropical forest carbon mapping , 2011, Oecologia.
[72] R. Dubayah,et al. Integrating waveform lidar with hyperspectral imagery for inventory of a northern temperate forest , 2008 .
[73] Zhao-Liang Li,et al. Scale Issues in Remote Sensing: A Review on Analysis, Processing and Modeling , 2009, Sensors.
[74] Didier Tanré,et al. Atmospherically resistant vegetation index (ARVI) for EOS-MODIS , 1992, IEEE Trans. Geosci. Remote. Sens..
[75] John F. Weishampel,et al. Structural diversity indices based on airborne LiDAR as ecological indicators for managing highly dynamic landscapes , 2015 .
[76] Barbara Koch,et al. Status and future of laser scanning, synthetic aperture radar and hyperspectral remote sensing data for forest biomass assessment , 2010 .
[77] J. Clevers,et al. Classification of floodplain vegetation by data fusion of spectral (CASI) and LiDAR data , 2007 .
[78] Andrew T. Hudak,et al. Discrete return lidar-based prediction of leaf area index in two conifer forests , 2008 .
[79] Cheng Wang,et al. Separation of Ground and Low Vegetation Signatures in LiDAR Measurements of Salt-Marsh Environments , 2009, IEEE Transactions on Geoscience and Remote Sensing.
[80] Javier Estornell,et al. Estimation of shrub biomass by airborne LiDAR data in small forest stands , 2011 .
[81] José Luis Hernández-Stefanoni,et al. Improving Species Diversity and Biomass Estimates of Tropical Dry Forests Using Airborne LiDAR , 2014, Remote. Sens..
[82] Göran Ståhl,et al. Estimating biomass in Hedmark County, Norway using national forest inventory field plots and airborne laser scanning , 2012 .
[83] Martin Rutzinger,et al. Estimation of Aboveground Biomass in Alpine Forests: A Semi-Empirical Approach Considering Canopy Transparency Derived from Airborne LiDAR Data , 2010, Sensors.
[84] Benjamin Koetz,et al. Multi-source land cover classification for forest fire management based on imaging spectrometry and LiDAR data , 2008 .
[85] Jessica J. Mitchell,et al. Errors in LiDAR-derived shrub height and crown area on sloped terrain , 2011 .
[86] Bernard R. Parresol,et al. Additivity of nonlinear biomass equations , 2001 .
[87] Jon Atli Benediktsson,et al. Land-cover classification using both hyperspectral and LiDAR data , 2015 .
[88] C. Justice,et al. Development of vegetation and soil indices for MODIS-EOS , 1994 .
[89] Xiaohuan Xi,et al. Estimation of wetland vegetation height and leaf area index using airborne laser scanning data , 2015 .
[90] Xiaohuan Xi,et al. Fusion of Airborne Discrete-Return LiDAR and Hyperspectral Data for Land Cover Classification , 2015, Remote. Sens..
[91] J. Eitel,et al. Quantifying aboveground forest carbon pools and fluxes from repeat LiDAR surveys , 2012 .
[92] S. Popescu,et al. Lidar remote sensing of forest biomass : A scale-invariant estimation approach using airborne lasers , 2009 .