Hyperspectral determination of feed quality constituents in temperate pastures: Effect of processing methods on predictive relationships from partial least squares regression
暂无分享,去创建一个
Simon D. Jones | Michael J. Hill | Peter Woodgate | Alex Held | Susanne Thulin | A. Held | M. Hill | S. Thulin | P. Woodgate | S. Jones
[1] E. J. Milton,et al. Processing of High Spectral Resolution Reflectance Data for the Retrieval of Canopy Water Content Information , 1998 .
[2] Frédéric Baret,et al. On spectral estimates of fresh leaf biochemistry , 1998 .
[3] C. Wessman. Evaluation of canopy biochemistry , 1990 .
[4] C. Elvidge. Visible and near infrared reflectance characteristics of dry plant materials , 1990 .
[5] Claudia M. Castaneda,et al. Estimating Canopy Water Content of Chaparral Shrubs Using Optical Methods , 1998 .
[6] George Alan Blackburn,et al. Retrieval of chlorophyll concentration from leaf reflectance spectra using wavelet analysis. , 2008 .
[7] Jana Albrechtová,et al. Spectral characteristics of lignin and soluble phenolics in the near infrared- a comparative study , 2002 .
[8] S. Ollinger,et al. Regional variation in foliar chemistry and n cycling among forests of diverse history and composition , 2002 .
[9] Yoshio Inoue,et al. Estimating forage biomass and quality in a mixed sown pasture based on partial least squares regression with waveband selection , 2008 .
[10] P. Carlini,et al. Quality evaluation of regional forage resources by means of near infrared reflectance spectroscopy , 2004 .
[11] Mary E. Martin,et al. HIGH SPECTRAL RESOLUTION REMOTE SENSING OF FOREST CANOPY LIGNIN, NITROGEN, AND ECOSYSTEM PROCESSES , 1997 .
[12] J. Shenk,et al. Predicting Forage Quality by Infrared Replectance Spectroscopy , 1976 .
[13] G. A. Blackburn,et al. Remote sensing of forest pigments using airborne imaging spectrometer and LIDAR imagery , 2002 .
[14] G. Donald,et al. Estimation of pasture growth rate in the south west of Western Australia from AVHRR NDVI and climate data , 2004 .
[15] Alfred Stein,et al. A bootstrap procedure to select hyperspectral wavebands related to tannin content , 2006 .
[16] Megan M. Lewis,et al. Discrimination of arid vegetation with airborne multispectral scanner hyperspectral imagery , 2001, IEEE Trans. Geosci. Remote. Sens..
[17] Patrick J. Starks,et al. Development of Canopy Reflectance Algorithms for Real-Time Prediction of Bermudagrass Pasture Biomass and Nutritive Values , 2006 .
[18] William Philpot,et al. The derivative ratio algorithm: avoiding atmospheric effects in remote sensing , 1991, IEEE Trans. Geosci. Remote. Sens..
[19] Onisimo Mutanga,et al. Discriminating sodium concentration in a mixed grass species environment of the Kruger National Park using field spectrometry , 2004 .
[20] Peter R. J. North,et al. The Propagation of Foliar Biochemical Absorption Features in Forest Canopy Reflectance , 1999 .
[21] Chein-I Chang,et al. Hyperspectral image classification and dimensionality reduction: an orthogonal subspace projection approach , 1994, IEEE Trans. Geosci. Remote. Sens..
[22] Simon J. Hook,et al. Synergies Between VSWIR and TIR Data for the Urban Environment: An Evaluation of the Potential for the Hyperspectral Infrared Imager (HyspIRI) , 2012 .
[23] Fuan Tsai,et al. Derivative Analysis of Hyperspectral Data , 1998 .
[24] A. J. Stern,et al. Remote sensing of crop residue cover and soil tillage intensity , 2006 .
[25] R. Clark,et al. Spectroscopic Determination of Leaf Biochemistry Using Band-Depth Analysis of Absorption Features and Stepwise Multiple Linear Regression , 1999 .
[26] F. Gordon,et al. The prediction of intake potential and organic matter digestibility of grass silages by near infrared spectroscopy analysis of undried samples , 1996, Proceedings of the British Society of Animal Science.
[27] Onisimo Mutanga,et al. Forage quality of savannas - Simultaneously mapping foliar protein and polyphenols for trees and grass using hyperspectral imagery , 2010 .
[28] Paul J. Curran,et al. Remote sensing the biochemical composition of a slash pine canopy , 1997, IEEE Trans. Geosci. Remote. Sens..
[29] R. Costanza,et al. Global mapping of ecosystem services and conservation priorities , 2008, Proceedings of the National Academy of Sciences.
[30] Moon S. Kim,et al. Estimating Corn Leaf Chlorophyll Concentration from Leaf and Canopy Reflectance , 2000 .
[31] E. M. Bridges.,et al. The remote sensing of contaminated land , 1984 .
[32] Daniel Dallon. Comparison of the Analytical Spectral Devices FieldSpec Pro JR and the Apogee/StellarNet Model SPEC-PAR/NIR Spectroradiometers , 2003 .
[33] Raymond F. Kokaly,et al. Investigating a Physical Basis for Spectroscopic Estimates of Leaf Nitrogen Concentration , 2001 .
[34] A. Gitelson,et al. Assessing Carotenoid Content in Plant Leaves with Reflectance Spectroscopy¶ , 2002, Photochemistry and photobiology.
[35] S. Dobrowski,et al. Steady-state chlorophyll a fluorescence detection from canopy derivative reflectance and double-peak red-edge effects , 2003 .
[36] George Alan Blackburn,et al. Wavelet decomposition of hyperspectral data: a novel approach to quantifying pigment concentrations in vegetation , 2007 .
[37] J. Dungan,et al. Reflectance spectroscopy of fresh whole leaves for the estimation of chemical concentration , 1992 .
[38] O. Mutanga. Hyperspectral Remote Sensing of Tropical Grass Quality and Quantity , 2004 .
[39] A. Skidmore,et al. Predicting in situ pasture quality in the Kruger National Park, South Africa, using continuum-removed absorption features , 2004 .
[40] Roberta E. Martin,et al. Brightness-normalized Partial Least Squares Regression for hyperspectral data , 2010 .
[41] B. Turner,et al. Estimating foliage nitrogen concentration from HYMAP data using continuum, removal analysis , 2004 .
[42] Michael J. Hill,et al. Quantitative mapping of pasture biomass using satellite imagery , 2011 .
[43] E. Kanemasu,et al. Use of second derivatives of canopy reflectance for monitoring prairie vegetation over different soil backgrounds , 1993 .
[44] C. Fischer,et al. Detection of plant reflectance anomalies in mining areas using imaging spectroscopy , 2003 .
[45] C. Daughtry,et al. Plant Litter and Soil Reflectance , 2000 .
[46] F. J. Gordon,et al. The use of near infrared reflectance spectroscopy /NIRS on undried samples of grass silage to predict chemical composition and digestibility parameters , 1998 .
[47] J. Peñuelas,et al. Remote sensing of nitrogen and lignin in Mediterranean vegetation from AVIRIS data: Decomposing biochemical from structural signals , 2002 .
[48] B. Yoder,et al. Predicting nitrogen and chlorophyll content and concentrations from reflectance spectra (400–2500 nm) at leaf and canopy scales , 1995 .
[49] Tormod Næs,et al. A user-friendly guide to multivariate calibration and classification , 2002 .
[50] Clement Atzberger,et al. Spectrometric estimation of leaf pigments in Norway spruce needles using band - depth analysis, partial least - square regression and inversion of a conifer leaf model , 2003 .
[51] George Alan Blackburn,et al. Relationships between Spectral Reflectance and Pigment Concentrations in Stacks of Deciduous Broadleaves , 1999 .
[52] R. Clark,et al. Reflectance spectroscopy: Quantitative analysis techniques for remote sensing applications , 1984 .
[53] D. H. Card,et al. Prediction of leaf chemistry by the use of visible and near infrared reflectance spectroscopy , 1988 .
[54] Magni Martens,et al. Multivariate Analysis of Quality : An Introduction , 2001 .
[55] B. Turner,et al. Use of high spectral resolution remote sensing to determine leaf palatability of eucalypt trees for folivorous marsupials , 2001 .
[56] B. J. Turner,et al. Nutrient estimation of eucalypt foliage derived from hyperspectral data , 2001, IGARSS 2001. Scanning the Present and Resolving the Future. Proceedings. IEEE 2001 International Geoscience and Remote Sensing Symposium (Cat. No.01CH37217).
[57] A. Skidmore,et al. Estimating tropical pasture quality at canopy level using band depth analysis with continuum removal in the visible domain , 2005 .
[58] R. Clark,et al. Mapping vegetation in Yellowstone National Park using spectral feature analysis of AVIRIS data , 2003 .
[59] Assessment of seasonal dry‐matter yield and quality of grass swards with imaging spectroscopy , 2003 .
[60] J. Dungan,et al. Estimating the foliar biochemical concentration of leaves with reflectance spectrometry: Testing the Kokaly and Clark methodologies , 2001 .
[61] G. A. Blackburn,et al. Quantifying Chlorophylls and Caroteniods at Leaf and Canopy Scales: An Evaluation of Some Hyperspectral Approaches , 1998 .
[62] Armando Apan,et al. Detection of Sclerotinia rot disease on celery using hyperspectral data and partial least squares regression , 2006 .
[63] S. Tarantola,et al. Detecting vegetation leaf water content using reflectance in the optical domain , 2001 .
[64] Nicholas C. Coops,et al. Prediction of eucalypt foliage nitrogen content from satellite-derived hyperspectral data , 2003, IEEE Trans. Geosci. Remote. Sens..
[65] Mary E. Martin,et al. Determination of carbon fraction and nitrogen concentration in tree foliage by near infrared reflectance : a comparison of statistical methods , 1996 .
[66] R. Phillips,et al. Estimating forage quantity and quality using aerial hyperspectral imagery for northern mixed-grass prairie , 2007 .