Register      Login
International Journal of Wildland Fire International Journal of Wildland Fire Society
Journal of the International Association of Wildland Fire
RESEARCH ARTICLE

Multitemporal LiDAR improves estimates of fire severity in forested landscapes

Michael S. Hoe A , Christopher J. Dunn A B and Hailemariam Temesgen A
+ Author Affiliations
- Author Affiliations

A College of Forestry, Oregon State University, 280 Peavy Hall, Corvallis, OR 97331, USA.

B Corresponding author. Email: chris.dunn@oregonstate.edu

International Journal of Wildland Fire 27(9) 581-594 https://doi.org/10.1071/WF17141
Submitted: 14 September 2017  Accepted: 29 July 2018   Published: 23 August 2018

Abstract

Landsat-based fire severity maps have limited ecological resolution, which can hinder assessments of change to specific resources. Therefore, we evaluated the use of pre- and post-fire LiDAR, and combined LiDAR with Landsat-based relative differenced Normalized Burn Ratio (RdNBR) estimates, to increase the accuracy and resolution of basal area mortality estimation. We vertically segmented point clouds and performed model selection on spectral and spatial pre- and post-fire LiDAR metrics and their absolute differences. Our best multitemporal LiDAR model included change in mean intensity values 2–10 m above ground, the sum of proportion of canopy reflection above 10 m, and differences in maximum height. This model significantly reduced root-mean-squared error (RMSE), root-mean-squared prediction error (RMSPE), and bias when compared with models using only RdNBR. Our top combined model integrated RdNBR with LiDAR return proportions <2 m above ground, pre-fire 95% heights and pre-fire return proportions <2 m above ground. This model also significantly reduced RMSE, RMSPE, and bias relative to RdNBR. Our results confirm that three-dimensional spectral and spatial information from multitemporal LiDAR can isolate disturbance effects on specific ecological resources with higher accuracy and ecological resolution than Landsat-based estimates, offering a new frontier in landscape-scale estimates of fire effects.

Additional keywords: change detection, fire effects, Klamath Mountains, tree mortality, wildfire.


References

Abatzoglou JT, Williams AP (2017) Impact of anthropogenic climate change on wildfire across western US forests. Proceedings of the National Academy of Sciences of the United States of America 113, 11770–11775.
Impact of anthropogenic climate change on wildfire across western US forests.Crossref | GoogleScholarGoogle Scholar |

Agee JK, Skinner CN (2005) Basic principles of forest fuel reduction treatments. Forest Ecology and Management 211, 83–96.
Basic principles of forest fuel reduction treatments.Crossref | GoogleScholarGoogle Scholar |

Antonarakis AS, Richards KS, Brasington J (2008) Object-based land-cover classification using airborne LiDAR. Remote Sensing of Environment 112, 2988–2998.
Object-based land-cover classification using airborne LiDAR.Crossref | GoogleScholarGoogle Scholar |

Betts MJ, Hagar JC, Rivers JW, Alexander J, McGarigal K, McComb B (2010) Thresholds in forest bird occurrence as a function of the amount of early-seral broadleaf forest at landscape scales. Ecological Applications 20, 2116–2130.
Thresholds in forest bird occurrence as a function of the amount of early-seral broadleaf forest at landscape scales.Crossref | GoogleScholarGoogle Scholar |

Bolton DK, Coops NC, Wulder MA (2015) Characterizing residual structure and forest recovery following high-severity fire in the western boreal of Canada using Landsat time-series and airborne LiDAR data. Remote Sensing of Environment 163, 48–60.
Characterizing residual structure and forest recovery following high-severity fire in the western boreal of Canada using Landsat time-series and airborne LiDAR data.Crossref | GoogleScholarGoogle Scholar |

Bouvier M, Durrieu S, Fournier RA, Renaud JP (2015) Generalizing predictive models of forest inventory attributes using an area-based approach with airborne LiDAR data. Remote Sensing of Environment 156, 322–334.
Generalizing predictive models of forest inventory attributes using an area-based approach with airborne LiDAR data.Crossref | GoogleScholarGoogle Scholar |

Bright BC, Hudak AT, Kennedy RE, Meddens AJ (2014) Landsat time series and LiDAR as predictors of live and dead basal area across five bark beetle-affected forests. IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing 7, 3440–3452.
Landsat time series and LiDAR as predictors of live and dead basal area across five bark beetle-affected forests.Crossref | GoogleScholarGoogle Scholar |

Brosofske KD, Froese RE, Falkowski MJ, Banskota A (2014) A review of methods for mapping and prediction of inventory attributes for operational forest management. Forest Science 60, 733–756.
A review of methods for mapping and prediction of inventory attributes for operational forest management.Crossref | GoogleScholarGoogle Scholar |

Brown JK (1974) Handbook for inventorying downed woody material. USDA Forest Service, Intermountain Forest and Range Experimentation, General Technical Report GTR-INT-16. (Ogden, UT)

Calcagno V (2013) glmulti: Model selection and multimodel inference made easy. R package version 1.0.7. Available at https://CRAN.R-project.org/package=glmulti [Accessed 8 December 2017]

Calkin DE, Thompson MP, Finney MA (2015) Negative consequences of positive feedbacks in US wildfire management. Forest Ecosystems 2, 1–10.
Negative consequences of positive feedbacks in US wildfire management.Crossref | GoogleScholarGoogle Scholar |

Cansler CA, McKenzie D (2012) How robust are burn severity indices when applied in a new region? Evaluation of alternate field-based and remote-sensing methods. Remote Sensing 4, 456–483.
How robust are burn severity indices when applied in a new region? Evaluation of alternate field-based and remote-sensing methods.Crossref | GoogleScholarGoogle Scholar |

Cline SP, Berg AB, Wright HM (1980) Snag characteristics and dynamics in Douglas-fir forests, western Oregon. The Journal of Wildlife Management 44, 773–786.
Snag characteristics and dynamics in Douglas-fir forests, western Oregon.Crossref | GoogleScholarGoogle Scholar |

Cohen WB, Yang Z, Kennedy R (2010) Detecting trends in forest disturbance and recovery using yearly Landsat time series: 2. TimeSync – tools for calibration and validation. Remote Sensing of Environment 114, 2911–2924.
Detecting trends in forest disturbance and recovery using yearly Landsat time series: 2. TimeSync – tools for calibration and validation.Crossref | GoogleScholarGoogle Scholar |

Coops NC, Hilker T, Wulder MA, St-Onge B, Newnham G, Siggins A, Trofymow JT (2007) Estimating canopy structure of Douglas-fir forest stands from discrete-return LiDAR. Trees 21, 295–310.
Estimating canopy structure of Douglas-fir forest stands from discrete-return LiDAR.Crossref | GoogleScholarGoogle Scholar |

Cribari-Neto F, Zeileis A (2010) Beta regression in R. Journal of Statistical Software 34, 1–24.
Beta regression in R.Crossref | GoogleScholarGoogle Scholar |

Donoghue DNM, Watt PH, Cox NJ, Wilson J (2007) Remote sensing of species mixtures in conifer plantations using LiDAR height and intensity data. Remote Sensing of Environment 110, 509–522.
Remote sensing of species mixtures in conifer plantations using LiDAR height and intensity data.Crossref | GoogleScholarGoogle Scholar |

Dunn CJ, Bailey JD (2012) Temporal dynamics and decay of coarse wood in early seral habitats of dry mixed conifer forests in Oregon’s Eastern Cascades. Forest Ecology and Management 276, 71–81.
Temporal dynamics and decay of coarse wood in early seral habitats of dry mixed conifer forests in Oregon’s Eastern Cascades.Crossref | GoogleScholarGoogle Scholar |

Dunn CJ, Bailey JD (2016) Tree mortality and structural change following mixed-severity fire in Pseudotsuga forests of Oregon’s Western Cascades, USA. Forest Ecology and Management 365, 107–118.
Tree mortality and structural change following mixed-severity fire in Pseudotsuga forests of Oregon’s Western Cascades, USA.Crossref | GoogleScholarGoogle Scholar |

Duren OC, Muir PS, Hosten PE (2012) Vegetation change from the Euro-American settlement era to the present in relation to environment and disturbance in south-west Oregon. Northwest Science 86, 310–328.
Vegetation change from the Euro-American settlement era to the present in relation to environment and disturbance in south-west Oregon.Crossref | GoogleScholarGoogle Scholar |

ESRI (Environmental Systems Research Institute) (2012) ArcGIS Release 10.4. (Redlands, CA).

Erdody TL, Moskal LM (2010) Fusion of LiDAR and imagery for estimating forest canopy fuels. Remote Sensing of Environment 114, 725–737.
Fusion of LiDAR and imagery for estimating forest canopy fuels.Crossref | GoogleScholarGoogle Scholar |

Eskelson BN, Madsen L, Hagar JC, Temesgen H (2011) Estimating riparian understory vegetation cover with beta regression and copula models. Forest Science 57, 212–221.

Franklin JF, Dyrness CT (1988) ‘Natural vegetation of Oregon and Washington.’ (Oregon State University Press: Corvallis, OR).

Garcia M, Riaño D, Chuvieco E, Danson FM (2010) Estimating biomass carbon stocks for a Mediterranean forest in central Spain using LiDAR height and intensity data. Remote Sensing of Environment 114, 816–830.
Estimating biomass carbon stocks for a Mediterranean forest in central Spain using LiDAR height and intensity data.Crossref | GoogleScholarGoogle Scholar |

Habib AF, Chang YC, Lee DC (2009) Occlusion-based methodology for the classification of LidAR data. Photogrammetric Engineering and Remote Sensing 75, 703–712.
Occlusion-based methodology for the classification of LidAR data.Crossref | GoogleScholarGoogle Scholar |

Hall S, Burke I, Box D, Kaufmann M, Stoker JM (2005) Estimating stand structure using discrete-return LiDAR: an example from low-density, fire-prone ponderosa pine forests. Forest Ecology and Management 208, 189–209.
Estimating stand structure using discrete-return LiDAR: an example from low-density, fire-prone ponderosa pine forests.Crossref | GoogleScholarGoogle Scholar |

Hallum D, Parent S (2014) Developing a business case for statewide light detection and ranging data collection. (Nebraska Department of Natural Resources) Available at http://watercenter. unl.edu/PRS/PRS2009/Posters/Hallum%20Doug.pdf [Accessed 11 May 2016]

Harvey BJ, Donato DC, Turner MG (2016) Drivers and trends in landscape patterns of stand-replacing fire in forests of the US Northern Rocky Mountains (1984–2010). Landscape Ecology 31, 2367–2383.
Drivers and trends in landscape patterns of stand-replacing fire in forests of the US Northern Rocky Mountains (1984–2010).Crossref | GoogleScholarGoogle Scholar |

Hessburg PF, Salter RB, James KM (2007) Re-examining fire severity relations in pre-management era mixed-conifer forests: inferences from landscape patterns of forest structure. Landscape Ecology 22, 5–24.
Re-examining fire severity relations in pre-management era mixed-conifer forests: inferences from landscape patterns of forest structure.Crossref | GoogleScholarGoogle Scholar |

Hijmans RJ (2016) Raster: geographic data analysis and modeling. R package ver. 2.5–8. Available at https://CRAN.R-project.org/package=raster [Verified 8 August 2018]

Hofner B, Mayr A, Fenske N, Schmid M (2016) gamboostLSS: boosting methods for GAMLSS models. R package ver. 1.2–1. Available at http://CRAN.R-project. org/package=gamboostLSS [Verified 8 August 2018]

Hudak AT, Lefsky MA, Cohen WB, Berterretche M (2002) Integration of LiDAR and Landsat ETM+ data for estimating and mapping forest canopy height. Remote Sensing of Environment 82, 397–416.
Integration of LiDAR and Landsat ETM+ data for estimating and mapping forest canopy height.Crossref | GoogleScholarGoogle Scholar |

Jolly WM, Cochrane MA, Freeborn PH, Holden AZ, Brown TJ, Williamson GJ, Bowman DM (2015) Climate-induced variations in global wildfire danger from 1979 to 2013. Nature Communications 6, 7537

Kane VR, McGaughey RJ, Bakker JD, Gersonde RF, Lutz JA, Franklin JF (2010) Comparisons between field-and LiDAR-based measures of stand structural complexity. Canadian Journal of Forest Research 40, 761–773.
Comparisons between field-and LiDAR-based measures of stand structural complexity.Crossref | GoogleScholarGoogle Scholar |

Kane VR, Lutz JA, Roberts SL, Smith DF, McGaughey RJ, Povak NA, Brooks ML (2013) Landscape-scale effects of fire severity on mixed-conifer and red fir forest structure in Yosemite national park. Forest Ecology and Management 287, 17–31.
Landscape-scale effects of fire severity on mixed-conifer and red fir forest structure in Yosemite national park.Crossref | GoogleScholarGoogle Scholar |

Kashani AG, Olsen MJ, Parrish CE, Wilson N (2015) A review of LIDAR radiometric processing: from ad hoc intensity correction to rigorous radiometric calibration. Sensors 15, 28099–28128.
A review of LIDAR radiometric processing: from ad hoc intensity correction to rigorous radiometric calibration.Crossref | GoogleScholarGoogle Scholar |

Kennedy RE, Yang Z, Cohen WB (2010) Detecting trends in forest disturbance and recovery using yearly Landsat time series: 1. LandTrendr – temporal segmentation algorithms. Remote Sensing of Environment 114, 2897–2910.
Detecting trends in forest disturbance and recovery using yearly Landsat time series: 1. LandTrendr – temporal segmentation algorithms.Crossref | GoogleScholarGoogle Scholar |

Key C, Benson N (2005) Landscape assessment: remote sensing of severity, the Normalized Burn Ratio and ground measure of severity, the Composite Burn Index. In ‘FIREMON: Fire effects monitoring and inventory system’. USDA Forest Service, Rocky Mountain Research Station, General Technical Report RMRS-GTR-164-CD, LA-1–55. (Ogden, UT)

Kolden CA, Bleeker TM, Smith A, Poulos HM, Camp AE (2017) Fire effects on historical wildfire refugia in contemporary wildfires. Forests 8, 400
Fire effects on historical wildfire refugia in contemporary wildfires.Crossref | GoogleScholarGoogle Scholar |

Korhonen L, Korhonen KT, Stenberg P, Maltamo M, Rautiainen M (2007) Local models for forest canopy cover with beta regression. Silva Fennica 41, 671
Local models for forest canopy cover with beta regression.Crossref | GoogleScholarGoogle Scholar |

Krawchuk MA, Haire SL, Coop J, Parisen M-A, Whitman E, Chong G, Miller C (2016) Topographic and fire weather controls of fire refugia in forested ecosystems of northwestern North America. Ecosphere 7, e01632
Topographic and fire weather controls of fire refugia in forested ecosystems of northwestern North America.Crossref | GoogleScholarGoogle Scholar |

Kuhn M, Wind J, Weston S, Williams A, Keefer C, Engelhardt A, Cooper T, Mayer Z, Kenkel B, Benesty M, Lescarbeau R, Ziem A, Scrucca L, Tang Y, Candan C (2016) caret: Classification and regression training. R package ver. 6.0–68. Available at http://CRAN.R-project.org/package=caret [Accessed 8 February 2-17]

Lefsky MA, Cohen WB, Hudak A, Acker SA, Ohmann J (1999) Integration of LiDAR, Landsat ETM+ and forest inventory data for regional forest mapping. International Archives of Photogrammetry and Remote Sensing 32, 119–126.

Lentile LB, Holden AZ, Smith AM, Falkowski MJ, Hudak AT, Morgan P, Lewis SA, Gessler PE, Benson NC (2006) Remote sensing techniques to assess active fire characteristics and post-fire effects. International Journal of Wildland Fire 15, 319–345.
Remote sensing techniques to assess active fire characteristics and post-fire effects.Crossref | GoogleScholarGoogle Scholar |

Marlon JR, Bartlein PJ, Gavin DG, Long CL, Anderson RS, Briles CE, Brown JK, Colombaroli D, Hallett DJ, Power MJ, Scharf EA, Walsh MK (2012) Long-term perspective on wildfires in the western USA. Proceedings of the National Academy of Sciences of the United States 109, E535–E543.
Long-term perspective on wildfires in the western USA.Crossref | GoogleScholarGoogle Scholar |

Mayr A, Fenske N, Hofner B, Kneib T, Schmid M (2012) Generalized additive models for location, scale and shape for high-dimensional data – a flexible approach based on boosting. Journal of the Royal Statistical Society. Series C, Applied Statistics 61, 403–427.
Generalized additive models for location, scale and shape for high-dimensional data – a flexible approach based on boosting.Crossref | GoogleScholarGoogle Scholar |

McCarley TR, Kolden CA, Vaillant NM, Hudak AT, Smith AMS, Wing BM, Kellog BS, Kreitler J (2017) Multitemporal LiDAR and Landsat quantification of fire-induced changes to forest structure. Remote Sensing of Environment 191, 419–432.
Multitemporal LiDAR and Landsat quantification of fire-induced changes to forest structure.Crossref | GoogleScholarGoogle Scholar |

McCombs JW, Roberts SD, Evans DL (2003) Influence of fusing LiDAR and multispectral imagery on remotely sensed estimates of stand density and mean tree height in a managed loblolly pine plantation. Forest Science 49, 457–466.

McGaughey RJ (2014) Fusion: providing fast, efficient, and flexible access to LiDAR, IFSAR and terrain datasets. USDA Forest Service, Pacific Northwest Research Station. Available at http://forsys.cfr.washington.edu/ fusion/fusionlatest.html [Accessed 28 September 2014]

Means JE, Acker SA, Harding DJ, Blair JB, Lefsky MA, Cohen WB, Harmon ME, McKee WA (1999) Use of large-footprint scanning airborne LiDAR to estimate forest stand characteristics in the Western Cascades of Oregon. Remote Sensing of Environment 67, 298–308.
Use of large-footprint scanning airborne LiDAR to estimate forest stand characteristics in the Western Cascades of Oregon.Crossref | GoogleScholarGoogle Scholar |

Meddens AJH, Kolden CA, Lutz JA (2016) Detecting unburned areas within wildfire perimeters using Landsat and ancillary data across the north-western United States. Remote Sensing of Environment 186, 275–285.
Detecting unburned areas within wildfire perimeters using Landsat and ancillary data across the north-western United States.Crossref | GoogleScholarGoogle Scholar |

Meddens AJH, Kolden CA, Lutz JA, Abatzoglou JT, Hudak AT (2018) Spatiotemporal patterns of unburned areas within fire perimeters in the north-western United States from 1984 to 2014. Ecosphere 9, e02029
Spatiotemporal patterns of unburned areas within fire perimeters in the north-western United States from 1984 to 2014.Crossref | GoogleScholarGoogle Scholar |

Meigs GW, Kennedy RE, Cohen WB (2011) A Landsat time series approach to characterize bark beetle and defoliator impacts on tree mortality and surface fuels in conifer forests. Remote Sensing of Environment 115, 3707–3718.
A Landsat time series approach to characterize bark beetle and defoliator impacts on tree mortality and surface fuels in conifer forests.Crossref | GoogleScholarGoogle Scholar |

Miller JD, Thode AE (2007) Quantifying burn severity in a heterogeneous landscape with a relative version of the delta Normalized Burn Ratio (dNBR). Remote Sensing of Environment 109, 66–80.
Quantifying burn severity in a heterogeneous landscape with a relative version of the delta Normalized Burn Ratio (dNBR).Crossref | GoogleScholarGoogle Scholar |

Miller JD, Safford HD, Crimmins M, Thode AE (2009) Quantitative evidence for increasing forest fire severity in the Sierra Nevada and southern Cascade Mountains, California and Nevada, USA. Ecosystems 12, 16–32.
Quantitative evidence for increasing forest fire severity in the Sierra Nevada and southern Cascade Mountains, California and Nevada, USA.Crossref | GoogleScholarGoogle Scholar |

Montealegre AL, Lamelas MT, Tanase MA, de la Riva J (2014) Forest fire severity assessment using ALS data in a Mediterranean environment. Remote Sensing 6, 4240–4265.
Forest fire severity assessment using ALS data in a Mediterranean environment.Crossref | GoogleScholarGoogle Scholar |

Morgan P, Keane RE, Dillon GK, Jain TB, Hudak AT, Karau EC, Sikkink PG, Holden ZA, Strand EK (2014) Challenges of assessing fire and burn severity using field measures, remote sensing and modeling. International Journal of Wildland Fire 23, 1045–1060.
Challenges of assessing fire and burn severity using field measures, remote sensing and modeling.Crossref | GoogleScholarGoogle Scholar |

MTBS (2014) Monitoring Trends In Burn Severity. (USDA Forest Service) Available at http://www.mtbs.gov. [Accessed 1 December 2014]

Næsset E (2007) Airborne laser scanning as a method in operational forest inventory: status of accuracy assessments accomplished in Scandinavia. Scandinavian Journal of Forest Research 22, 433–442.
Airborne laser scanning as a method in operational forest inventory: status of accuracy assessments accomplished in Scandinavia.Crossref | GoogleScholarGoogle Scholar |

Naficy C, Sala A, Keeling EG, Graham J, DeLuca TH (2010) Interactive effects of historical logging and fire exclusion on ponderosa pine forest structure in the Northern Rockies. Ecological Applications 20, 1851–1864.
Interactive effects of historical logging and fire exclusion on ponderosa pine forest structure in the Northern Rockies.Crossref | GoogleScholarGoogle Scholar |

Omernik JM, Griffith GE (2014) Ecoregions of the conterminous United States: evolution of a hierarchical spatial framework. Environmental Management 54, 1249–1266.
Ecoregions of the conterminous United States: evolution of a hierarchical spatial framework.Crossref | GoogleScholarGoogle Scholar |

Parks SA, Dillon GK, Miller C (2014) A new metric for quantifying burn severity: the Relativized Burn Ratio. Remote Sensing 6, 1827–1844.
A new metric for quantifying burn severity: the Relativized Burn Ratio.Crossref | GoogleScholarGoogle Scholar |

Persson A, Holmgren J, Soderman U (2002) Detecting and measuring individual trees using an airborne laser scanner. Photogrammetric Engineering and Remote Sensing 68, 925–932.

Poudel KP, Temesgen H (2016) Developing biomass equations for western hemlock and red alder trees in western Oregon forests. Forests 7, 88
Developing biomass equations for western hemlock and red alder trees in western Oregon forests.Crossref | GoogleScholarGoogle Scholar |

R Core Team (2016) R: A language and environment for statistical computing. (R Foundation for Statistical Computing: Vienna, Austria). Available at https://www.R-project. Org/ [Accessed 5 June 2018]

Reilly MJ, Dunn CJ, Meigs GW, Spies TA, Kennedy RE, Bailey JD, Briggs K (2017) Contemporary patterns of burn severity in forests of the Pacific Northwest (1985–2010). Ecosphere 8, e01695
Contemporary patterns of burn severity in forests of the Pacific Northwest (1985–2010).Crossref | GoogleScholarGoogle Scholar |

Richardson JJ, Moskal LM, Kim SH (2009) Modeling approaches to estimate effective leaf area index from aerial discrete-return LiDAR. Agricultural and Forest Meteorology 149, 1152–1160.
Modeling approaches to estimate effective leaf area index from aerial discrete-return LiDAR.Crossref | GoogleScholarGoogle Scholar |

Ryan KC, Amman GD (1996) Bark beetle activity and delayed tree mortality in the Greater Yellowstone Area following the 1988 fires. In ‘The ecological implications of fire in Greater Yellowstone: Proceedings of the second biennial conference on the Greater Yellowstone Ecosystem’, 19–21 September 1993, Yellowstone National Park, WY. (Ed. J Greenlee) USDA Forest Service, General Technical Report RMRS-GTR-238, pp. 151–158. (International Association of Wildland Fire: Fairfield, WA)

Ryan KC, Frandsen WH (1991) Basal injury from smoldering fires in mature Pinus ponderosa Laws. International Journal of Wildland Fire 1, 107–118.
Basal injury from smoldering fires in mature Pinus ponderosa Laws.Crossref | GoogleScholarGoogle Scholar |

Seidl R, Rammer W, Spies TA (2014) Disturbance legacies increase the resilience of forest ecosystem structure, composition and functioning. Ecological Applications 24, 2063–2077.
Disturbance legacies increase the resilience of forest ecosystem structure, composition and functioning.Crossref | GoogleScholarGoogle Scholar |

Sensenig T, Bailey JD, Tappeiner JC (2013) Stand development, fire and growth of old-growth and young forests in south-western Oregon, USA. Forest Ecology and Management 291, 96–109.
Stand development, fire and growth of old-growth and young forests in south-western Oregon, USA.Crossref | GoogleScholarGoogle Scholar |

Skowronski N, Clark K, Nelson R, Hom J, Patterson M (2007) Remotely sensed measurements of forest structure and fuel loads in the pinelands of New Jersey. Remote Sensing of Environment 108, 123–129.
Remotely sensed measurements of forest structure and fuel loads in the pinelands of New Jersey.Crossref | GoogleScholarGoogle Scholar |

Smithson M, Verkuilen J (2006) A better lemon squeezer? Maximum-likelihood regression with beta-distributed dependent variables. Psychological Methods 11, 54
A better lemon squeezer? Maximum-likelihood regression with beta-distributed dependent variables.Crossref | GoogleScholarGoogle Scholar |

Steel ZL, Safford HD, Viers JH (2015) The fire frequency–severity relationship and the legacy of fire suppression in California forests. Ecosphere 6, 1–23.
The fire frequency–severity relationship and the legacy of fire suppression in California forests.Crossref | GoogleScholarGoogle Scholar |

Sumnall MJ, Hill RA, Hinsley SA (2016) Comparison of small-footprint discrete return and full waveform airborne LiDAR data for estimating multiple forest variables. Remote Sensing of Environment 173, 214–223.
Comparison of small-footprint discrete return and full waveform airborne LiDAR data for estimating multiple forest variables.Crossref | GoogleScholarGoogle Scholar |

Thompson JR, Spies TA (2009) Vegetation and weather explain variation in crown damage within a large mixed-severity wildfire. Forest Ecology and Management 258, 1684–1694.
Vegetation and weather explain variation in crown damage within a large mixed-severity wildfire.Crossref | GoogleScholarGoogle Scholar |

Thompson JR, Spies TA, Ganio LM (2007) Reburn severity in managed and unmanaged vegetation in a large wildfire. Proceedings of the National Academy of Sciences of the United States of America 104, 10743–10748.
Reburn severity in managed and unmanaged vegetation in a large wildfire.Crossref | GoogleScholarGoogle Scholar |

Vogeler JC, Yang Z, Cohen WB (2016) Mapping post-fire habitat characteristics through the fusion of remote sensing tools. Remote Sensing of Environment 173, 294–303.
Mapping post-fire habitat characteristics through the fusion of remote sensing tools.Crossref | GoogleScholarGoogle Scholar |

Warton DI, Hui FKC (2011) The arcsine is asinine: the analysis of proportions in ecology. Ecology 92, 3–10.
The arcsine is asinine: the analysis of proportions in ecology.Crossref | GoogleScholarGoogle Scholar |

Whittier TR, Gray AN (2016) Tree mortality-based fire severity classification for forest inventories: a Pacific Northwest national forests example. Forest Ecology and Management 359, 199–209.
Tree mortality-based fire severity classification for forest inventories: a Pacific Northwest national forests example.Crossref | GoogleScholarGoogle Scholar |

Wulder M, White J, Alvarez F, Han T, Rogan J, Hawkes B (2009) Characterizing boreal forest wildfire with multi-temporal Landsat and LiDAR data. Remote Sensing of Environment 113, 1540–1555.
Characterizing boreal forest wildfire with multi-temporal Landsat and LiDAR data.Crossref | GoogleScholarGoogle Scholar |

Wulder MA, Han T, White JC, Sweda T, Tsuzuki H (2007) Integrating profiling LiDAR with Landsat data for regional boreal forest canopy attribute estimation and change characterization. Remote Sensing of Environment 110, 123–137.
Integrating profiling LiDAR with Landsat data for regional boreal forest canopy attribute estimation and change characterization.Crossref | GoogleScholarGoogle Scholar |

Wulder MA, White JC, Nelson RF, Næsset E, Ørka HO, Coops NC, Hilker T, Bater CW, Gobakken T (2012) LiDAR sampling for large-area forest characterization: a review. Remote Sensing of Environment 121, 196–209.
LiDAR sampling for large-area forest characterization: a review.Crossref | GoogleScholarGoogle Scholar |

Yan WY, Shaker A (2016) Reduction of striping noise in overlapping LiDAR intensity data by radiometric normalization. International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences XLI-B1, 41

Young J (2014) Maine geolibrary: cost benefit analysis and typical uses of LiDAR data. (Maine Library of Geographic Information) Available at http://www.maine.gov/geolib/LiDAR.html [Accessed 11 May 2016]

Zald HSJ, Dunn CJ (2018) Severe fire weather and intensive forest management increase fire severity in a multi-ownership landscape. Ecological Applications 28, 1068–1080.
Severe fire weather and intensive forest management increase fire severity in a multi-ownership landscape.Crossref | GoogleScholarGoogle Scholar |

Zeileis A, Hothorn T (2002) Diagnostic checking in regression relationships. R News 2, 7–10.