Burned Area Detection and Burn Severity Assessment of a Heathland Fire in Belgium Using Airborne Imaging Spectroscopy (APEX)
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Toon Spanhove | Jeroen Vanden Borre | Birgen Haest | Sander Veraverbeke | Rudi Goossens | Lennert Schepers | S. Veraverbeke | R. Goossens | L. Schepers | B. Haest | T. Spanhove | J. V. Borre
[1] C. Tucker. Red and photographic infrared linear combinations for monitoring vegetation , 1979 .
[2] A. Huete. A soil-adjusted vegetation index (SAVI) , 1988 .
[3] V. Caselles,et al. Mapping burns and natural reforestation using thematic Mapper data , 1991 .
[4] A. Huete,et al. A Modified Soil Adjusted Vegetation Index , 1994 .
[5] A. Goetz,et al. Extraction of dry leaf spectral features from reflectance spectra of green vegetation , 1994 .
[6] Bo-Cai Gao,et al. Normalized difference water index for remote sensing of vegetation liquid water from space , 1995, Defense, Security, and Sensing.
[7] B. Gao. NDWI—A normalized difference water index for remote sensing of vegetation liquid water from space , 1996 .
[8] João M. N. Silva,et al. Spectral characterisation and discrimination of burnt areas , 1999 .
[9] E. Chuvieco. Remote Sensing of Large Wildfires , 1999 .
[10] José M. C. Pereira,et al. A comparative evaluation of NOAA/AVHRR vegetation indexes for burned surface detection and mapping , 1999, IEEE Trans. Geosci. Remote. Sens..
[11] Monica G. Turner,et al. Prefire Heterogeneity, Fire Severity, and Early Postfire Plant Reestablishment in Subalpine Forests , 1999 .
[12] M. El-Kahloun,et al. A comparison of the nutrient status of Molinia caerulea and neighbouring vegetation in a rich fen. , 2000 .
[13] M. Schaepman,et al. Calibration and Validation Concept for the Airborne PRISM Experiment (APEX) , 2000 .
[14] S. Flasse,et al. An evaluation of different bi-spectral spaces for discriminating burned shrub-savannah , 2001 .
[15] E. Chuvieco,et al. Assessment of different spectral indices in the red-near-infrared spectral domain for burned land discrimination , 2002 .
[16] A. Huete,et al. Overview of the radiometric and biophysical performance of the MODIS vegetation indices , 2002 .
[17] F. Baret,et al. Information Content of HyMap Hyperspectral Imagery , 2002 .
[18] F. Lloret,et al. Influence of fire severity on plant regeneration by means of remote sensing imagery , 2003 .
[19] S. Ross,et al. Evaluating management techniques for controlling Molinia caerulea and enhancing Calluna vulgaris on upland wet heathland in northern England, UK , 2003 .
[20] A. Milligan,et al. A field assessment of the role of selective herbicides in the restoration of British moorland dominated by Molinia , 2003 .
[21] B. Pinty,et al. GEMI: a non-linear index to monitor global vegetation from satellites , 1992, Vegetatio.
[22] R. Marrs,et al. Control of Molinia caerulea on upland moors , 2004 .
[23] Mark Noonan,et al. The post-fire measurement of fire severity and intensity in the Christmas 2001 Sydney wildfires , 2004 .
[24] J. W. Wagtendonk,et al. Comparison of AVIRIS and Landsat ETM+ detection capabilities for burn severity , 2004 .
[25] R. Marrs,et al. Developing an integrated land management strategy for the restoration of moorland vegetation on Molinia caerulea-dominated vegetation for conservation purposes in upland Britain , 2004 .
[26] Martin J. Wooster,et al. Testing the potential of multi-spectral remote sensing for retrospectively estimating fire severity in African savannahs , 2005 .
[27] Frederick W. Smith,et al. Patch structure, fire-scar formation, and tree regeneration in a large mixed-severity fire in the South Dakota Black Hills, USA , 2005 .
[28] D. Verbyla,et al. Evaluation of remotely sensed indices for assessing burn severity in interior Alaska using Landsat TM and ETM , 2005 .
[29] G. Blust. Heathlands in a changing society : abstracts and excursion guide: 9th European heathland workshop : 13th to 17th september 2005 Bredene and Genk, Belgium , 2005 .
[30] R. Brys,et al. Fire increases aboveground biomass, seed production and recruitment success of Molinia caerulea in dry heathland , 2005 .
[31] P. Gessler,et al. Evaluation of novel thermally enhanced spectral indices for mapping fire perimeters and comparisons with fire atlas data , 2005 .
[32] R. Brys,et al. FIRE INCREASES INVASIVE SPREAD OF MOLINIA CAERULEA MAINLY THROUGH CHANGES IN DEMOGRAPHIC PARAMETERS , 2005 .
[33] David L. Verbyla,et al. Landscape-level interactions of prefire vegetation, burn severity, and postfire vegetation over a 16-year period in interior Alaska , 2005 .
[34] Ross A. Bradstock,et al. Remote sensing of fire severity in the Blue Mountains: influence of vegetation type and inferring fire intensity , 2006 .
[35] S. A. Lewis,et al. Remote sensing techniques to assess active fire characteristics and post-fire effects , 2006 .
[36] J. Keeley. FIRE SEVERITY AND PLANT AGE IN POSTFIRE RESPROUTING OF WOODY PLANTS IN SAGE SCRUB AND CHAPARRAL , 2006 .
[37] N. Benson,et al. Landscape Assessment: Ground measure of severity, the Composite Burn Index; and Remote sensing of severity, the Normalized Burn Ratio , 2006 .
[38] R. Lasaponara. Estimating spectral separability of satellite derived parameters for burned areas mapping in the Calabria region by using SPOT-Vegetation data , 2006 .
[39] Raymond F. Kokaly,et al. Characterization of post-fire surface cover, soils, and burn severity at the Cerro Grande Fire, New Mexico, using hyperspectral and multispectral remote sensing , 2007 .
[40] P. Morgan,et al. Evaluation of linear spectral unmixing and ΔNBR for predicting post‐fire recovery in a North American ponderosa pine forest , 2007 .
[41] E. Chuvieco,et al. Burn severity estimation from remotely sensed data: Performance of simulation versus empirical models , 2007 .
[42] Raymond F. Kokaly,et al. Postfire soil burn severity mapping with hyperspectral image unmixing , 2007 .
[43] A. Smith,et al. Production of Landsat ETM+ reference imagery of burned areas within Southern African savannahs: comparison of methods and application to MODIS , 2007 .
[44] Sarah A. Lewis,et al. Mapping Ground Cover Using Hyperspectral Remote Sensing after the 2003 Simi and Old Wildfires in Southern California , 2007 .
[45] S. A. Lewis,et al. The Relationship of Multispectral Satellite Imagery to Immediate Fire Effects , 2007 .
[46] Jay D. Miller,et al. Quantifying burn severity in a heterogeneous landscape with a relative version of the delta Normalized Burn Ratio (dNBR) , 2007 .
[47] Geert de Blust. Chapter 11: Heathland, an ever changing landscape , 2007 .
[49] R. Hall,et al. Using Landsat data to assess fire and burn severity in the North American boreal forest region: an overview and summary of results , 2008 .
[50] N. Webb,et al. The traditional management of European heathlands , 2008 .
[51] D. Roy,et al. The availability of cloud-free Landsat ETM+ data over the conterminous United States and globally , 2008 .
[52] Eric S. Kasischke,et al. Seasonal and topographic effects on estimating fire severity from Landsat TM/ETM+ data , 2008 .
[53] E. Kasischke,et al. Evaluating the potential of Landsat TM/ETM+ imagery for assessing fire severity in Alaskan black spruce forests , 2008 .
[54] B. A. Park,et al. Assessing the differenced Normalized Burn Ratio ’ s ability to map burn severity in the boreal forest and tundra ecosystems of Alaska ’ s national parks , 2008 .
[55] K. Murphy,et al. Evaluating the ability of the differenced Normalized Burn Ratio (dNBR) to predict ecologically significant burn severity in Alaskan boreal forests , 2008 .
[56] W. Verhoef,et al. PROSPECT+SAIL models: A review of use for vegetation characterization , 2009 .
[57] J. Keeley. Fire intensity, fire severity and burn severity: a brief review and suggested usage , 2009 .
[58] R. Marzano,et al. Developing an Adaptive Management approach to prescribed burning: a long-term heathland conservation experiment in north-west Italy , 2009 .
[59] S. Hook,et al. The ASTER spectral library version 2.0 , 2009 .
[60] Emilio Chuvieco,et al. GeoCBI: A modified version of the Composite Burn Index for the initial assessment of the short-term burn severity from remotely sensed data , 2009 .
[61] Emilio Chuvieco,et al. Short-term assessment of burn severity using the inversion of PROSPECT and GeoSail models , 2009 .
[62] C. Legg,et al. Fire intensity, fire severity and ecosystem response in heathlands: factors affecting the regeneration of Calluna vulgaris , 2010 .
[63] Alistair M. S. Smith,et al. Beyond Landsat: a comparison of four satellite sensors for detecting burn severity in ponderosa pine forests of the Gila Wilderness, NM, USA , 2010 .
[64] Sander Veraverbeke,et al. The temporal dimension of differenced Normalized Burn Ratio (dNBR) fire/burn severity studies: the case of the large 2007 Peloponnese wildfires in Greece. , 2010 .
[65] Sander Veraverbeke,et al. Illumination effects on the differenced Normalized Burn Ratio's optimality for assessing fire severity , 2010, Int. J. Appl. Earth Obs. Geoinformation.
[66] G. Asner,et al. Mapping burn severity and burning efficiency in California using simulation models and Landsat imagery , 2010 .
[67] Paul Scheunders,et al. An object-based approach to quantity and quality assessment of heathland habitats in the framework of natura 2000 using hyperspectral airborne ahs images , 2010 .
[68] Jan Verbesselt,et al. Assessing intra-annual vegetation regrowth after fire using the pixel based regeneration index , 2011 .
[69] Sander Veraverbeke,et al. Evaluating Spectral Indices for Assessing Fire Severity in Chaparral Ecosystems (Southern California) Using MODIS/ASTER (MASTER) Airborne Simulator Data , 2011, Remote. Sens..
[70] R. Marrs,et al. Factors affecting moorland plant communities and component species in relation to prescribed burning , 2011 .
[71] Sander Veraverbeke,et al. Evaluation of pre/post-fire differenced spectral indices for assessing burn severity in a Mediterranean environment with Landsat Thematic Mapper , 2011 .
[72] Pol Coppin,et al. Endmember variability in Spectral Mixture Analysis: A review , 2011 .
[73] N. Boelman,et al. Understanding burn severity sensing in Arctic tundra: exploring vegetation indices, suboptimal assessment timing and the impact of increasing pixel size , 2011 .
[74] E. Chuvieco,et al. Mapping burned areas from Landsat TM/ETM+ data with a two-phase algorithm: Balancing omission and commission errors , 2011 .
[75] Roger D. Ottmar,et al. Using hyperspectral imagery to estimate forest floor consumption from wildfire in boreal forests of Alaska, USA , 2011 .
[76] S. Hook,et al. Evaluating spectral indices for burned area discrimination using MODIS/ASTER (MASTER) airborne simulator data , 2011 .
[77] L. G. Velle,et al. The age of Calluna stands moderates post‐fire regeneration rate and trends in northern Calluna heathlands , 2012 .
[78] John F. Caratti,et al. FIREMON: Fire Effects Monitoring and Inventory System , 2012 .
[79] Ben Somers,et al. Spectral mixture analysis to assess post-fire vegetation regeneration using Landsat Thematic Mapper imagery: Accounting for soil brightness variation , 2012, Int. J. Appl. Earth Obs. Geoinformation.
[80] S. Hook,et al. Evaluating spectral indices and spectral mixture analysis for assessing fire severity, combustion completeness and carbon emissions , 2013 .
[81] D. Roberts,et al. Multiple Endmember Spectral Mixture Analysis (MESMA) to map burn severity levels from Landsat images in Mediterranean countries , 2013 .
[82] Nikos Koutsias,et al. Sensitivity of spectral reflectance values to different burn and vegetation ratios: A multi-scale approach applied in a fire affected area , 2013 .
[83] G. Thoonen,et al. Classification of heathland vegetation in a hierarchical contextual framework , 2013 .