Quantifying Boreal Forest Structure 475 and Composition Using UAV Structure from Motion, vol.9, 2018. ,
A survey of cross-validation procedures for model selection, 2010. ,
URL : https://hal.archives-ouvertes.fr/hal-00407906
, , vol.4, pp.40-79
Remote sensing of selective 480 logging in Amazonia: Assessing limitations based on detailed field observations, p.481, 2002. ,
, Remote Sensing of Environment, vol.80, pp.483-496
Automated mapping of tropical 483 deforestation and forest degradation: CLASlite, Journal of Applied Remote Sensing, vol.484, issue.3, pp.33543-033543, 2009. ,
, , p.486
A universal airborne LiDAR approach for tropical 487 forest carbon mapping, Oecologia, vol.168, pp.1147-1160, 2012. ,
490 Tropical forests are a net carbon source based on aboveground measurements of 491 gain and loss, Science, vol.358, pp.230-234, 2017. ,
Attenuating the bidirectional texture variation of satellite 493 images of tropical forest canopies, Remote Sensing of Environment, vol.171, pp.245-260, 2015. ,
The 496 variation of apparent crown size and canopy heterogeneity across lowland 497 Amazonian forests: Amazon forest canopy properties, Global Ecology and 498 Biogeography, vol.19, pp.72-84, 2010. ,
, , p.500
Ribeiro de Castro Solar, p.502 ,
, , p.503
, , p.504, 2016.
, Anthropogenic disturbance in tropical forests can double biodiversity loss from 505 deforestation, Nature, vol.535, pp.144-147
Aboveground biomass mapping of African forest mosaics using canopy texture 508 analysis: toward a regional approach, Ecological applications, vol.507, 1984. ,
, , p.510
A large-scale field 511 assessment of carbon stocks in human-modified tropical forests, Global Change 512 Biology, vol.20, pp.3713-3726, 2014. ,
, , p.514
Tree growth and stem carbon accumulation in human-modified 515 Amazonian forests following drought and fire 8, 2018. ,
, , p.517
The Potential of Multisource 518 Remote Sensing for Mapping the Biomass of a Degraded Amazonian Forest 21, 2018. ,
Random forests, Machine learning, vol.45, pp.5-32, 2001. ,
Habitat fragmentation and the desiccation of 521 forest canopies: A case study from eastern Amazonia, Biological Conservation, vol.143, pp.2763-2769, 2010. ,
Forest 524 fragmentation and edge effects from deforestation and selective logging in the 525 Brazilian Amazon, Biological Conservation, vol.141, pp.1745-1757, 2008. ,
,
Monitoring tropical forest degradation 528 using spectral unmixing and Landsat time series analysis. Remote Sensing of 529 Environment, 2018. ,
, , p.531
When is a forest a 532 forest? Forest concepts and definitions in the era of forest and landscape restoration, 2016. ,
, Ambio, vol.45, pp.538-550
Comparison of forest canopy 535 height profiles in a mountainous region of Taiwan derived from airborne lidar and 536 unmanned aerial vehicle imagery, GIScience & Remote Sensing, vol.56, pp.1289-1304, 2019. ,
,
Quantifying change in patterned semi-arid vegetation by Fourier 539 analysis of digitized aerial photographs, International Journal of Remote Sensing, vol.23, pp.3407-3425, 2002. ,
Predicting tropical forest stand 542 structure parameters from Fourier transform of very high-resolution remotely sensed 543 canopy images, Journal of applied ecology, vol.42, pp.1121-1128, 2005. ,
Predicting tropical forest stand 545 structure parameters from Fourier transform of very high-resolution remotely sensed 546 canopy images: Predicting tropical forest stand structure, Journal of Applied Ecology, vol.547, pp.1121-1128, 2005. ,
Optimal Altitude, Overlap, and Weather Conditions for 549 Computer Vision UAV Estimates of Forest Structure, Remote Sensing, vol.7, p.13895, 2015. ,
Tracking 552 disturbance-regrowth dynamics in tropical forests using structural change detection 553 and Landsat time series, Remote Sensing of Environment, vol.169, pp.320-334, 2015. ,
,
Forest degradation 556 promotes fire during drought in moist tropical forests of Ghana. Forest Ecology and 557 Management, vol.440, pp.158-168, 2019. ,
Simulation and quantification of the fine-559 scale spatial pattern and heterogeneity of forest canopy structure: A lacunarity-based 560 method designed for analysis of continuous canopy heights. Forest Ecology and 561 Management, vol.214, pp.65-90, 2005. ,
563 Forest disturbance and recovery: A general review in the context of spaceborne 564 remote sensing of impacts on aboveground biomass and canopy structure, Journal, p.565, 2009. ,
, Geophysical Research, vol.114
NDWI-A normalized difference water index for remote sensing of vegetation 567 liquid water from space, Remote Sensing of Environment, vol.58, pp.257-266, 1996. ,
, , pp.67-70
Degradation and Recovery in Changing Forest 570 Landscapes: A Multiscale Conceptual Framework, Annual Review of Environment 571 and Resources, vol.42, pp.161-188, 2017. ,
573 Measurement and Monitoring for REDD+: The Needs, Current Technological 574 Capabilities, and Future Potential, SSRN Electronic Journal, vol.575, 2014. ,
The Afterlives of Degraded Tropical Forests: New Value for 577 Conservation and Development, Environment and Society: Advances in Research, vol.5, pp.124-140, 2014. ,
Bayes Optimality in Linear Discriminant Analysis. IEEE 580 Transactions on Pattern Analysis and Machine Intelligence, vol.30, pp.647-657, 2008. ,
,
Cumulative 583 disturbances to assess forest degradation using spectral unmixing in the north-584 eastern Amazon. Appl Veg Sci avsc, 2019. ,
, , p.586
Options for monitoring 587 and estimating historical carbon emissions from forest degradation in the context of 588 REDD+. Carbon balance and management 6, p.13, 2011. ,
Methods for mapping forest disturbance and degradation from optical earth 591 observation data: A review, Current Forestry Reports, vol.3, pp.32-45, 2017. ,
Principal component methods -hierarchical 593 clustering -partitional clustering: why would we need to choose for visualizing data, vol.594, p.17, 2010. ,
The Application Of Cluster Analysis In Strategic 596 Management Research: An Analysis And Critique, Strategic Management Journal, vol.597, pp.441-458, 1996. ,
Dawn of Drone Ecology: Low-Cost Autonomous Aerial Vehicles 600 for Conservation, Tropical Conservation Science, vol.5, pp.121-132, 2012. ,
,
A Study of Cross-Validation and Bootstrap for Accuracy Estimation and 603 Model Selection 7, 1995. ,
Applied predictive modeling, 2013. ,
Le tournant 607 environnemental en Amazonie : ampleur et limites du découplage entre production et 608 déforestation, 2017. ,
FactoMineR : An R Package for Multivariate Analysis, 610 Journal of Statistical Software, vol.25, 2008. ,
Increasing human dominance of tropical 612 forests, Science, vol.349, pp.827-832, 2015. ,
Classification and regression by randomForest, vol.2, pp.18-614, 2002. ,
, , p.616
Aboveground biomass variability 617 across intact and degraded forests in the Brazilian Amazon: AMAZON INTACT AND 618 DEGRADED FOREST BIOMASS, Global Biogeochemical Cycles, vol.30, pp.1639-1660, 2016. ,
Tropical 621 Forests in the Anthropocene, Annual Review of Environment and Resources, vol.39, pp.125-159, 2014. ,
Analysis of lacunarity and scales of spatial 624 homogeneity in IKONOS images of Amazonian tropical forest canopies, vol.112, pp.2074-2087, 2008. ,
, , 2010.
, Above-ground biomass dynamics after reduced-impact logging in the Eastern 628 Amazon, Forest Ecology and Management, vol.259, pp.367-373
,
, , p.631
Evaluation of Sentinel-1 and 632 2 Time Series for Land Cover Classification of Forest-Agriculture Mosaics in 633 Temperate and Tropical Landscapes 20, 2019. ,
Canopy area of large trees 636 explains aboveground biomass variations across neotropical forest landscapes, 2018. ,
, Biogeosciences, vol.15, pp.3377-3390
Current remote sensing approaches to 639 monitoring forest degradation in support of countries measurement, reporting and 640 verification (MRV) systems for REDD+. Carbon Balance and Management 12, vol.641, 2017. ,
Understorey fire 643 frequency and the fate of burned forests in southern Amazonia, Philosophical 644 Transactions of the Royal Society B: Biological Sciences, vol.368, 2013. ,
Determining tree height 647 and crown diameter from high-resolution UAV imagery, International Journal of 648 Remote Sensing, vol.38, pp.2392-2410, 2017. ,
, , p.650
, , p.651
, , p.652
, , p.653
Toward 654 a general tropical forest biomass prediction model from very high resolution optical 655 satellite images, Remote Sensing of Environment, vol.200, pp.140-153, 2017. ,
,
, , p.658, 2012.
, Assessing aboveground tropical forest biomass using Google Earth canopy images, Ecological Applications, vol.659, pp.993-1003
, , p.661
The last 662 frontiers of wilderness: Tracking loss of intact forest landscapes from, Science Advances, vol.3, issue.663, 2000. ,
The Importance of Defining 'Forest': Tropical Forest 665 Degradation, Deforestation, Long-term Phase Shifts, and Further Transitions: 666 Importance of Defining 'Forest, Biotropica, vol.42, pp.10-20, 2010. ,
Quantifying long-term changes in carbon stocks and forest structure from 670 Amazon forest degradation, Environmental Research Letters, vol.669, 2018. ,
, , p.673
Impacts of Airborne Lidar Pulse Density on Estimating Biomass 674 Stocks and Changes in a Selectively Logged Tropical Forest. Remote Sensing 9, vol.675, p.1068, 2017. ,
Dynamics of forest fires in the southwestern Amazon. Forest Ecology and 678 Management, vol.677, pp.312-322, 2018. ,
, , p.680, 2018.
, Deforestation-Induced Fragmentation Increases Forest Fire Occurrence in Central 681 Brazilian Amazonia, vol.9, p.305
Biomass estimation of mixed forest landscape using 683 a Fourier transform texture-based approach on very-high-resolution optical satellite 684 imagery, International Journal of Remote Sensing, vol.35, pp.3331-3349, 2014. ,
,
, , p.687
Ten-Year Landsat Classification of 688 Deforestation and Forest Degradation in the Brazilian Amazon, Remote Sensing, vol.5, pp.5493-5513, 2013. ,
Forest resilience, biodiversity, and climate change: a 692 synthesis of the biodiversity, resilience, stabiblity relationship in forest ecosystems, 2009. ,
Multiple Patterns of Forest Disturbance and Logging Shape Forest 695 Landscapes in Paragominas, Brazil. Forests, vol.694, 2016. ,
Modern Applied Statistics with S 504, 2002. ,
Structure-from-Motion' photogrammetry: A low-cost, effective tool for geoscience 699 applications, Geomorphology, vol.698, pp.300-314, 2012. ,
,
Seeing the forest from drones: 702 Testing the potential of lightweight drones as a tool for long-term forest monitoring, 2016. ,
, Biological Conservation, vol.198, p.705