R. Ahmed, P. Siqueira, S. Hensley, and K. Bergen, Uncertainty of forest biomass estimates in North temperate forests due to allometry: Implications for remote sensing, Remote Sensing, vol.5, pp.3007-3036, 2013.

A. Baccini, S. J. Goetz, W. S. Walker, N. T. Laporte, M. Sun et al., Estimated carbon dioxide emissions from tropical deforestation improved by carbon-density maps, Nature Climate Change, vol.2, pp.182-185, 2012.

J. Bastin, N. Barbier, M. Réjou-méchain, A. Fayolle, S. Gourlet-fleury et al., Seeing Central African forests through their largest trees, Scientific Reports, vol.5, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01892195

J. F. Bastin, A. Fayolle, Y. Tarelkin, J. Van-den-bulcke, T. De-haulleville et al., Wood specific gravity variations and biomass of central African tree species: The simple choice of the outer wood, PLoS ONE, vol.10, 2015.

M. Béland, D. D. Baldocchi, J. L. Widlowski, R. A. Fournier, and M. M. Verstraete, On seeing the wood from the leaves and the role of voxel size in determining leaf area distribution of forests with terrestrial LiDAR, Agricultural and Forest Meteorology, vol.184, pp.82-97, 2014.

E. Bournez, T. Landes, M. Saudreau, P. Kastendeuch, and G. Najjar, From TLS point clouds to 3D models of trees: A comparison of existing algorithms for 3D tree reconstruction. International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences -ISPRS Archives, vol.42, pp.113-120, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01577092

K. Calders, G. Newnham, A. Burt, S. Murphy, P. Raumonen et al., Nondestructive estimates of aboveground biomass using terrestrial laser scanning, Methods in Ecology and Evolution, vol.6, pp.198-208, 2015.

J. Chave, C. Andalo, S. Brown, M. A. Cairns, J. Q. Chambers et al., Tree allometry and improved estimation of carbon stocks and balance in tropical forests, Oecologia, vol.145, pp.87-99, 2005.

J. Chave, R. Condit, S. Aguilar, A. Hernandez, S. Lao et al., Error propagation and scaling for tropical forest biomass estimates, 2004.

, Philosophical Transactions of the Royal Society B: Biological Sciences, vol.359, pp.409-420

J. Chave, M. Réjou-méchain, A. Búrquez, E. Chidumayo, M. S. Colgan et al., Improved allometric models to estimate the aboveground biomass of tropical trees, Global Change Biology, vol.20, pp.3177-3190, 2014.
URL : https://hal.archives-ouvertes.fr/hal-02063299

D. B. Clark and J. R. Kellner, Tropical forest biomass estimation and the fallacy of misplaced concreteness, Journal of Vegetation Science, vol.23, pp.1191-1196, 2012.

J. F. Côté, R. A. Fournier, and R. Egli, An architectural model of trees to estimate forest structural attributes using terrestrial LiDAR, Environmental Modelling and Software, vol.26, pp.761-777, 2011.

K. C. Cushman, H. C. Muller-landau, R. S. Condit, and S. P. Hubbell, Improving estimates of biomass change in buttressed trees using tree taper models, Methods in Ecology and Evolution, vol.5, pp.573-582, 2014.

M. Dassot, A. Colin, P. Santenoise, M. Fournier, and T. Constant, Terrestrial laser scanning for measuring the solid wood volume, including branches, of adult standing trees in the forest environment. Computers and Electronics in Agriculture, vol.89, pp.86-93, 2012.
URL : https://hal.archives-ouvertes.fr/hal-01003344

R. B. Davies, Hypothesis testing when a nuisance parameter is present only under the alternative, Biometrika, vol.74, pp.33-43, 1987.

B. J. Enquist, G. B. West, and J. H. Brown, Extensions and evaluations of a general quantitative theory of forest structure and dynamics, Proceedings of the National Academy of Sciences of the United States of America, vol.106, pp.7046-7051, 2009.

T. R. Feldpausch, J. Lloyd, S. L. Lewis, R. J. Brienen, M. Gloor et al., Tree height integrated into pantropical forest biomass estimates, Biogeosciences, vol.9, pp.3381-3403, 2012.

E. O. Figueiredo, M. V. Oliveira, E. M. Braz, D. De-almeida-papa, and P. M. Fearnside, LIDAR-based estimation of bole biomass for precision management of an Amazonian forest: Comparisons of groundbased and remotely sensed estimates. Remote Sensing of Environment, vol.187, pp.281-293, 2016.

M. A. Fischler and R. C. Bolles, Random sample consensus: A paradigm for model fitting with applications to image analysis and automated cartography, Communications of the ACM, vol.24, pp.381-395, 1981.

S. Gartlan, UICN, l'Alliance mondiale pour la nature: Commission des Communantés européennes, 1989.

R. C. Goodman, O. L. Phillips, and T. R. Baker, The importance of crown dimensions to improve tropical tree biomass estimates, Ecological Applications, vol.24, pp.680-698, 2014.

J. Hackenberg, C. Morhart, J. Sheppard, H. Spiecker, and M. Disney, Highly accurate tree models derived from terrestrial laser scan data: A method description. Forests, vol.5, pp.1069-1105, 2014.

J. Hackenberg, H. Spiecker, K. Calders, M. Disney, and P. Raumonen, , 2015.

, SimpleTree -An efficient open source tool to build tree models from TLS clouds. Forests, vol.6, pp.4245-4294

J. Hackenberg, M. Wassenberg, H. Spiecker, and D. Sun, Non destructive method for biomass prediction combining TLS derived tree volume and wood density. Forests, vol.6, pp.1274-1300, 2015.

F. Hosoi, Y. Nakai, and K. Omasa, Voxel tree modeling for estimating leaf area density and woody material volume using 3-D LIDAR data. ISPRS Annals of Photogrammetry, Remote Sensing and Spatial Information Sciences, 2013.

R. A. Houghton, B. Byers, and A. A. Nassikas, A role for tropical forests in stabilizing atmospheric CO2, Nature Climate Change, vol.5, pp.1022-1023, 2015.

S. Kaasalainen, A. Krooks, J. Liski, P. Raumonen, H. Kaartinen et al., Change detection of tree biomass with terrestrial laser scanning and quantitative structure modelling, Remote Sensing, vol.6, pp.3906-3922, 2014.

M. Van-leeuwen and M. Nieuwenhuis, Retrieval of forest structural parameters using LiDAR remote sensing, European Journal of Forest Research, vol.129, pp.749-770, 2010.

R. Letouzey, Notice de la carte phytogéographique du Cameroun au 1 500 000, 1985.

D. Maniatis, Y. Malhi, L. Saint-andré, D. Mollicone, N. Barbier et al., Evaluating the potential of commercial forest inventory data to report on forest carbon stock and forest carbon stock changes for REDD+ under the UNFCCC, International Journal of Forestry Research, pp.1-13, 2011.

J. Mei, L. Zhang, S. Wu, Z. Wang, and L. Zhang, 3D tree modeling from incomplete point clouds via optimization and L1-MST, International Journal of Geographical Information Science, vol.31, pp.999-1021, 2017.

S. Momo-takoudjou, P. M. Ploton, B. Sonké, J. Hackenberg, S. Griffon et al., Data from: Using Terrestrial Laser Scanning data to estimate large tropical trees biomass and calibrate allometric models: A comparison with traditional destructive approach, 2017.

V. M. Muggeo, Estimating regression models with unkown breakpoints, Statistics in Medicine, vol.22, pp.1097-0258, 2003.

E. M. Nogueira, P. M. Fearnside, B. W. Nelson, R. I. Barbosa, and E. W. Keizer, Estimates of forest biomass in the Brazilian Amazon: New allometric equations and adjustments to biomass from wood-volume inventories, Forest Ecology and Management, vol.256, pp.1853-1867, 2008.

N. Nölke, L. Fehrmann, I. N. Jaya, T. Tiryana, D. Seidel et al., On the geometry and allometry of big-buttressed trees -A challenge for forest monitoring: New insights from 3D-modeling with terrestrial laser scanning, IForest, vol.8, pp.574-581, 2015.

A. Olagoke, C. Proisy, J. B. Féret, E. Blanchard, F. Fromard et al., Extended biomass allometric equations for large mangrove trees from terrestrial LiDAR data. Trees -Structure and Function, vol.30, pp.935-947, 2016.
URL : https://hal.archives-ouvertes.fr/hal-02602503

N. Picard, F. Boyemba-bosela, and V. Rossi, Reducing the error in biomass estimates strongly depends on model selection, Annals of Forest Science, vol.72, pp.811-823, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01284209

N. Picard and L. Saint-andré, Manuel de construction d 'équations allométriques pour l 'estimation du volume et la biomasse des arbres. Centre de Coopération Internationale en Recherche Agronomique pour le Développement, p.224, 2012.

P. Ploton, N. Barbier, S. T. Momo, M. Rejou-mechain, F. Boyemba-bosela et al., Closing a gap in tropical forest biomass estimation: Taking crown mass variation into account in pantropical allometries, Biogeosciences, vol.13, pp.1571-1585, 2016.
URL : https://hal.archives-ouvertes.fr/hal-01358263

, R Internals. R Development Core Team, vol.1, p.63, 2015.

M. Z. Rahman, M. A. Bakar, K. A. Razak, A. W. Rasib, K. D. Kanniah et al., Non-destructive, laser-based individual tree aboveground biomass estimation in a tropical rainforest, Forests, vol.8, p.86, 2017.

P. Raumonen, E. Casella, K. Calders, S. Murphy, M. Åkerbloma et al., Massive-scale tree modelling from TLS data. ISPRS Annals of Photogrammetry, Remote Sensing and Spatial Information Sciences, pp.189-196, 2015.

P. Raumonen, M. Kaasalainen, M. Åkerblom, S. Kaasalainen, H. Kaartinen et al., Fast automatic precision tree models from terrestrial laser scanner data. Remote Sensing, vol.5, pp.491-520, 2013.

P. Rochon, PypeTree: A tool for reconstructing tree perennial tissues from point clouds, Sensors, vol.14, pp.4271-4289, 2014.

A. E. Stovall, A. G. Vorster, R. S. Anderson, P. H. Evangelista, and H. H. Shugart, Non-destructive aboveground biomass estimation of coniferous trees using terrestrial LiDAR. Remote Sensing of Environment, pp.31-42, 0200.

K. Tansey, N. Selmes, A. Anstee, N. J. Tate, and A. Denniss, Estimating tree and stand variables in a Corsican Pine woodland from terrestrial laser scanner data, International Journal of Remote Sensing, vol.30, pp.5195-5209, 2009.

S. Tao, Q. Guo, S. Xu, Y. Su, Y. Li et al., A geometric method for wood-leaf separation using terrestrial and simulated lidar data. Photogrammetric Engineering & Remote Sensing, vol.81, pp.767-776, 2015.

S. Tao, F. Wu, Q. Guo, Y. Wang, W. Li et al., Segmenting tree crowns from terrestrial and mobile LiDAR data by exploring ecological theories, ISPRS Journal of Photogrammetry and Remote Sensing, vol.110, pp.66-76, 2015.

P. H. Torr and A. Zisserman, MLESAC: A new robust estimator with application to estimating image geometry. Computer Vision and Image Understanding, vol.78, pp.138-156, 2000.

J. Trochta, M. Kru?ek, T. Vr?ka, and K. Kraâl, 3D Forest: An application for descriptions of three-dimensional forest structures using terrestrial LiDAR, PLoS ONE, vol.12, 2017.

P. Wilkes, A. Lau, M. Disney, K. Calders, A. Burt et al., Data acquisition considerations for terrestrial laser scanning of forest plots. Remote Sensing of Environment, vol.196, pp.140-153, 2017.

A. E. Zanne, G. Lopez-gonzalez, D. A. Coomes, J. Ilic, S. Jansen et al., Global wood density database, p.33, 2009.