D. R. Almeida, S. C. Stark, R. Chazdon, B. W. Nelson, R. G. Cesar et al., The effectiveness of lidar remote sensing for monitoring forest cover attributes and landscape restoration, Forest Ecology and Management, vol.438, pp.34-43, 2019.

,

A. , LAS SPECIFICATION, 2013.

C. W. Bater, M. A. Wulder, N. C. Coops, R. F. Nelson, T. Hilker et al., Stability of Sample-Based Scanning-LiDAR-Derived Vegetation Metrics for Forest Monitoring, IEEE Transactions on Geoscience and Remote Sensing, vol.49, issue.6, pp.2385-2392, 2011.

F. J. Bohn and A. Huth, The importance of forest structure to biodiversity-productivity relationships, Royal Society Open Science, vol.4, issue.1, p.160521, 2017.

M. Bouvier, S. Durrieu, R. A. Fournier, and J. P. Renaud, , 2015.

, Generalizing predictive models of forest inventory attributes using an area-based approach with airborne LiDAR data. Remote Sensing of Environment, vol.156, pp.322-334

,

M. Bouvier, S. Durrieu, R. A. Fournier, N. Saint-geours, D. Guyon et al., Influence of Sampling Design Parameters on Biomass Predictions Derived from Airborne LiDAR Data, Canadian Journal of Remote Sensing, vol.45, issue.5, pp.650-672, 2019.
URL : https://hal.archives-ouvertes.fr/hal-02317064

,

J. Breidenbach and R. Astrup, Small area estimation of forest attributes in the Norwegian National Forest Inventory, European Journal of Forest Research, vol.131, issue.4, pp.1255-1267, 2012.

J. Breidenbach, A. Nothdurft, and G. Kändler, Comparison of nearest neighbour approaches for small area estimation of tree species-specific forest inventory attributes in central Europe using airborne laser scanner data, European Journal of Forest Research, vol.129, issue.5, pp.833-846, 2010.

,

L. Cao, N. C. Coops, J. L. Innes, J. Dai, H. Ruan et al., Tree species classification in subtropical forests using small-footprint full-waveform LiDAR data, International Journal of Applied Earth Observation and Geoinformation, vol.49, pp.39-51, 2016.

J. Côté, R. A. Fournier, J. E. Luther, and O. R. Van-lier, Fine-scale three-dimensional modeling of boreal forest plots to improve forest characterization with remote sensing, Remote Sensing of Environment, vol.219, issue.4, pp.99-114, 2018.

J. S. Evans, A. T. Hudak, R. Faux, and A. M. Smith, , 2009.

, Discrete return lidar in natural resources: Recommendations for project planning, data processing, and deliverables. Remote Sensing, vol.1, pp.776-794

L. Korhonen, I. Korpela, J. Heiskanen, and M. Maltamo, Airborne discrete-return LIDAR data in the estimation of vertical canopy cover, angular canopy closure and leaf area index. Remote Sensing of Environment, vol.115, pp.1065-1080, 2011.

M. A. Lefsky, W. B. Cohen, D. J. Harding, G. G. Parker, S. A. Acker et al., Lidar remote sensing of above-ground biomass in three biomes, Global Ecology and Biogeography, vol.11, issue.5, pp.393-399, 2002.

J. Liu, A. K. Skidmore, S. Jones, T. Wang, M. Heurich et al., Large off-nadir scan angle of airborne LiDAR can severely affect the estimates of forest structure metrics, ISPRS Journal of Photogrammetry and Remote Sensing, vol.136, pp.13-25, 2018.

B. Mitchell, R. Jacokes-mancini, and H. Fisk, United States Department of Agriculture Forest Service Remote Sensing Applications Center Geospatial Management Office -Considerations for using Lidar Data-A Project Implementation Guide, 2012.

A. Montaghi, Effect of scanning angle on vegetation metrics derived from a nationwide Airborne Laser Scanning acquisition, Canadian Journal of Remote Sensing, vol.39, pp.37-41, 2013.

E. Naesset, Airborne laser scanning as a method in operational forest inventory: Status of accuracy assessments accomplished in Scandinavia, Scandinavian Journal of Forest Research, vol.22, issue.5, pp.433-442, 2007.

,

E. Naesset, Effects of different sensors, flying altitudes, and pulse repetition frequencies on forest canopy metrics and biophysical stand properties derived from small-footprint airborne laser data. Remote Sensing of Environment, vol.113, pp.148-159, 2009.

T. Nilson, A theoretical analysis of the frequency of gaps in plant stands, Agricultural Meteorology, vol.8, pp.90092-90098, 1971.

G. G. Parker and M. E. Russ, The canopy surface and stand development: assessing forest canopy structure and complexity with near-surface altimetry, Forest Ecology and Management, vol.189, issue.1-3, pp.307-315, 2004.

,

J. R. Roussel, M. Béland, J. Caspersen, and A. Achim, A mathematical framework to describe the effect of beam incidence angle on metrics derived from airborne LiDAR: The case of forest canopies approaching turbid medium behaviour, Remote Sensing of Environment, vol.209, pp.824-834, 2018.

,

K. K. Singh, G. Chen, J. B. Vogler, and R. K. Meentemeyer, When Big Data are Too Much: Effects of LiDAR Returns and Point Density on Estimation of Forest Biomass, IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing, vol.9, issue.7, pp.3210-3218, 2016.

,

P. Tompalski, J. C. White, N. C. Coops, and M. A. Wulder, Demonstrating the transferability of forest inventory attribute models derived using airborne laser scanning data, Remote Sensing of Environment, vol.227, pp.110-124, 2019.

,

C. Véga, J. P. Renaud, S. Durrieu, and M. Bouvier, On the interest of penetration depth, canopy area and volume metrics to improve Lidar-based models of forest parameters, Remote Sensing of Environment, vol.175, pp.32-42, 2016.

,

G. Vincent, C. Antin, M. Laurans, J. Heurtebize, S. Durrieu et al., Mapping plant area index of tropical evergreen forest by airborne laser scanning. A crossvalidation study using LAI2200 optical sensor, Remote Sensing of Environment, vol.198, pp.254-266, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01608489

,

L. Wallace, A. Lucieer, C. Watson, and D. Turner, Development of a UAV-LiDAR system with application to forest inventory, Remote Sensing, vol.4, issue.6, pp.1519-1543, 2012.

,

J. C. White, P. Tompalski, M. Vastaranta, N. Saarinen, and C. Stepper, A model development and application guide for generating an enhanced forest inventory using airborne laser scanning data and an area-based approach, 2017.