Optimizing spectral resolutions for the classification of C 3 and C 4 grass species, using wavelengths of known absorption features
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Riyad Ismail | Onisimo Mutanga | Clement Adjorlolo | Moses Azong Cho | M. Cho | O. Mutanga | R. Ismail | C. Adjorlolo
[1] Achim Zeileis,et al. Conditional variable importance for random forests , 2008, BMC Bioinformatics.
[2] G. Henebry,et al. A technique for monitoring ecological disturbance in tallgrass prairie using seasonal NDVI trajectories and a discriminant function mixture model , 1997 .
[3] W. Bond,et al. Will global change improve grazing quality of grasslands? A call for a deeper understanding of the effects of shifts from C4 to C3 grasses for large herbivores , 2010 .
[4] J. C. Price. How unique are spectral signatures , 1994 .
[5] D. Killick. An account of the plant ecology of the Cathedral Peak area of the Natal Drakensberg. , 1963 .
[6] F. Csillag,et al. The Influence of Vegetation Index and Spatial Resolution on a Two-Date Remote Sensing-Derived Relation to C4 Species Coverage , 2001 .
[7] A. Skidmore,et al. Spectral discrimination of vegetation types in a coastal wetland , 2003 .
[8] Onisimo Mutanga,et al. Spectral resampling based on user-defined inter-band correlation filter: C3 and C4 grass species classification , 2013, Int. J. Appl. Earth Obs. Geoinformation.
[9] D. Sims,et al. Relationships between leaf pigment content and spectral reflectance across a wide range of species, leaf structures and developmental stages , 2002 .
[10] Onisimo Mutanga,et al. Examining the utility of random forest and AISA Eagle hyperspectral image data to predict Pinus patula age in KwaZulu-Natal, South Africa , 2011 .
[11] G. A. Blackburn,et al. Quantifying Chlorophylls and Caroteniods at Leaf and Canopy Scales: An Evaluation of Some Hyperspectral Approaches , 1998 .
[12] S. Tarantola,et al. Detecting vegetation leaf water content using reflectance in the optical domain , 2001 .
[13] Rasmus Fensholt,et al. Detecting Canopy Water Status Using Shortwave Infrared Reflectance Data From Polar Orbiting and Geostationary Platforms , 2010, IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing.
[14] Nasir D. Memon,et al. Context-based lossless interband compression-extending CALIC , 2000, IEEE Trans. Image Process..
[15] P. M. Hansena,et al. Reflectance measurement of canopy biomass and nitrogen status in wheat crops using normalized difference vegetation indices and partial least squares regression , 2003 .
[16] Leo Breiman,et al. Random Forests , 2001, Machine Learning.
[17] Onisimo Mutanga,et al. Field spectrometry of papyrus vegetation (Cyperus papyrus L.) in swamp wetlands of St Lucia, South Africa , 2009, 2009 IEEE International Geoscience and Remote Sensing Symposium.
[18] Achim Zeileis,et al. Bias in random forest variable importance measures: Illustrations, sources and a solution , 2007, BMC Bioinformatics.
[19] A. Smith,et al. Weed–Crop Discrimination Using Remote Sensing: A Detached Leaf Experiment1 , 2003, Weed Technology.
[20] Jennifer A. Miller,et al. Contextual land-cover classification: incorporating spatial dependence in land-cover classification models using random forests and the Getis statistic , 2010 .
[21] Coleen Vogel,et al. Climate Change Impacts on African Rangelands , 2008 .
[22] P. Donnelly,et al. Quantitative Leaf Anatomy of C3 and C4 Grasses (Poaceae): Bundle Sheath and Mesophyll Surface Area Relationships , 1994 .
[23] Mahesh Pal,et al. Random forest classifier for remote sensing classification , 2005 .
[24] Joydeep Ghosh,et al. Random forests of binary hierarchical classifiers for analysis of hyperspectral data , 2003, IEEE Workshop on Advances in Techniques for Analysis of Remotely Sensed Data, 2003.
[25] Kiona Ogle,et al. Implications of interveinal distance for quantum yield in C4 grasses: a modeling and meta-analysis , 2003, Oecologia.
[26] G. Carter. Ratios of leaf reflectances in narrow wavebands as indicators of plant stress , 1994 .
[27] B. Wylie,et al. NDVI, C3 AND C4 PRODUCTION, AND DISTRIBUTIONS IN GREAT PLAINS GRASSLAND LAND COVER CLASSES , 1997 .
[28] Liangyun Liu,et al. Mapping C3 and C4 plant functional types using separated solar-induced chlorophyll fluorescence from hyperspectral data , 2011 .
[29] Roberta E. Martin,et al. Predicting tropical plant physiology from leaf and canopy spectroscopy , 2009, Oecologia.
[30] R. Sage,et al. The Nitrogen Use Efficiency of C(3) and C(4) Plants: II. Leaf Nitrogen Effects on the Gas Exchange Characteristics of Chenopodium album (L.) and Amaranthus retroflexus (L.). , 1987, Plant physiology.
[31] M. Schlossberg,et al. An evaluation of multi-spectral responses on selected turfgrass species , 2000 .
[32] R. Schulze,et al. Incoming solar radiation patterns and vegetation response: Examples from the natal drakensberg , 1977, Vegetatio.
[33] J. Gamon,et al. The photochemical reflectance index: an optical indicator of photosynthetic radiation use efficiency across species, functional types, and nutrient levels , 1997, Oecologia.
[34] A. Prasad,et al. Newer Classification and Regression Tree Techniques: Bagging and Random Forests for Ecological Prediction , 2006, Ecosystems.
[35] Giles M. Foody,et al. Discriminating and mapping the C3 and C4 composition of grasslands in the northern Great Plains, USA , 2007, Ecol. Informatics.
[36] Joseph M. Craine,et al. Grazing and landscape controls on nitrogen availability across 330 South African savanna sites , 2009 .
[37] M. Ashton,et al. Accuracy assessments of hyperspectral waveband performance for vegetation analysis applications , 2004 .
[38] P. Curran. Remote sensing of foliar chemistry , 1989 .
[39] P. Thenkabail,et al. Hyperspectral Vegetation Indices and Their Relationships with Agricultural Crop Characteristics , 2000 .
[40] A. Skidmore,et al. Discriminating tropical grass (Cenchrus ciliaris) canopies grown under different nitrogen treatments using spectroradiometry , 2003 .
[41] Jonathan Cheung-Wai Chan,et al. Evaluation of random forest and adaboost tree-based ensemble classification and spectral band selection for ecotope mapping using airborne hyperspectral imagery , 2008 .
[42] G. Asner. Biophysical and Biochemical Sources of Variability in Canopy Reflectance , 1998 .
[43] G. F. Hughes,et al. On the mean accuracy of statistical pattern recognizers , 1968, IEEE Trans. Inf. Theory.
[44] Lorenzo Bruzzone,et al. Semisupervised Classification of Hyperspectral Images by SVMs Optimized in the Primal , 2007, IEEE Transactions on Geoscience and Remote Sensing.
[45] D. Horler,et al. The red edge of plant leaf reflectance , 1983 .
[46] J. Kattge,et al. Improving assessment and modelling of climate change impacts on global terrestrial biodiversity. , 2011, Trends in ecology & evolution.
[47] Lorenzo Bruzzone,et al. On the role of spectral resolution and classifier complexity in the analysis of hyperspectral images of forest areas , 2007, SPIE Remote Sensing.
[48] E. Hunt,et al. Estimating near-infrared leaf reflectance from leaf structural characteristics. , 2001, American journal of botany.
[49] Lorenzo Bruzzone,et al. Classification of hyperspectral remote sensing images with support vector machines , 2004, IEEE Transactions on Geoscience and Remote Sensing.
[50] Lalit Kumar,et al. Optimal band selection from hyperspectral data for Lantana camara discrimination , 2012 .
[51] José M. Paruelo,et al. Grass species differentiation through canopy hyperspectral reflectance , 2009 .
[52] Trevor R. Hill,et al. Description, classification and ordination of the dominant vegetation communities, Cathedral Peak, KwaZulu-Natal Drakensberg , 1996 .
[53] A. Skidmore,et al. Nitrogen detection with hyperspectral normalized ratio indices across multiple plant species , 2005 .
[54] T. Faurtyot. Vegetation water and dry matter contents estimated from top-of-the-atmosphere reflectance data: A simulation study , 1997 .
[55] Lalit Kumar,et al. Mapping Coastal Vegetation Using an Expert System and Hyperspectral Imagery , 2004 .
[56] José M. Paruelo,et al. Trait differences between grass species along a climatic gradient in South and North America , 2008 .
[57] Guizhong Liu,et al. An Efficient Compression Algorithm for Hyperspectral Images Based on Correlation Coefficients Adaptive Three Dimensional Wavelet Zerotree Coding , 2007, 2007 IEEE International Conference on Image Processing.
[58] Gregory Asner,et al. Improving Discrimination of Savanna Tree Species Through a Multiple-Endmember Spectral Angle Mapper Approach: Canopy-Level Analysis , 2010, IEEE Transactions on Geoscience and Remote Sensing.
[59] Carolin Strobl,et al. Unbiased split selection for classification trees based on the Gini Index , 2007, Comput. Stat. Data Anal..
[60] R Core Team,et al. R: A language and environment for statistical computing. , 2014 .
[61] Andrew K. Skidmore,et al. Hyperspectral predictors for monitoring biomass production in Mediterranean mountain grasslands: Majella National Park, Italy , 2009 .
[62] Rick L. Lawrence,et al. Mapping invasive plants using hyperspectral imagery and Breiman Cutler classifications (RandomForest) , 2006 .
[63] J. De Baerdemaeker,et al. Weed Detection Using Canopy Reflection , 2002, Precision Agriculture.
[64] O. Ghannoum,et al. C4 photosynthesis and water stress. , 2008, Annals of botany.
[65] Onisimo Mutanga,et al. Discriminating the early stages of Sirex noctilio infestation using classification tree ensembles and shortwave infrared bands , 2011 .