Detection of phenoxy herbicide dosage in cotton crops through the analysis of hyperspectral data
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[1] Tormod Næs,et al. Related versions of the multiplicative scatter correction method for preprocessing spectroscopic data , 1995 .
[2] Gengxing Zhao,et al. Discussion on remote sensing estimation of soil nutrient contents , 2011, 2011 International Conference on Remote Sensing, Environment and Transportation Engineering.
[3] Larry Biehl,et al. The Effect of Postemergence Herbicides on The Spectral Reflectance of Corn , 2008, Weed Technology.
[4] Armando Apan,et al. Hyperspectral sensing to detect the impact of herbicide drift on cotton growth and yield , 2016 .
[5] A. G. Frenich,et al. Wavelength selection method for multicomponent spectrophotometric determinations using partial least squares , 1995 .
[6] Gilles Rabatel,et al. Potential of field hyperspectral imaging as a non destructive method to assess leaf nitrogen content in Wheat , 2011 .
[7] B. R. Roberts,et al. RELATIONSHIPS BETWEEN REMOTELY SENSED REFLECTANCE DATA AND COTTON GROWTH AND YIELD , 2000 .
[8] G. A. Blackburn,et al. Hyperspectral remote sensing of plant pigments. , 2006, Journal of experimental botany.
[9] Armando A. Apan,et al. Spectral discrimination of bulloak (Allocasuarina luehmannii) and associated woodland for habitat mapping of the endangered bulloak jewel butterfly (Hypochrysops piceata) in southern Queensland , 2014 .
[10] Miguel C. Teixeira,et al. Environmental genomics: mechanistic insights into toxicity of and resistance to the herbicide 2,4-D. , 2007, Trends in biotechnology.
[11] L. Bruce,et al. Remote Sensing to Detect Herbicide Drift on Crops1 , 2004, Weed Technology.
[12] A. Maiden. BEYOND THE FARM GATE , 1963 .
[13] Anatoly A. Gitelson,et al. Remote estimation of nitrogen and chlorophyll contents in maize at leaf and canopy levels , 2013, Int. J. Appl. Earth Obs. Geoinformation.
[14] A. Karnieli,et al. Combining leaf physiology, hyperspectral imaging and partial least squares-regression (PLS-R) for grapevine water status assessment , 2015 .
[15] Miaomiao Jiang,et al. Sparse partial-least-squares discriminant analysis for different geographical origins of Salvia miltiorrhiza by (1) H-NMR-based metabolomics. , 2014, Phytochemical analysis : PCA.
[16] Lutgarde M. C. Buydens,et al. Interpretation of variable importance in Partial Least Squares with Significance Multivariate Correlation (sMC) , 2014 .
[17] J. Simal-Gándara,et al. The mobility and degradation of pesticides in soils and the pollution of groundwater resources , 2008 .
[18] J. Bryan Blair,et al. Mapping biomass and stress in the Sierra Nevada using lidar and hyperspectral data fusion , 2011 .
[19] R. Tobias. An Introduction to Partial Least Squares Regression , 1996 .
[20] Introduction to Pesticide Drift , 2014 .
[21] D. Llewellyn,et al. Tolerance of cotton expressing a 2,4-D detoxification gene to 2,4-D applied in the field , 2007 .
[22] Ron Wehrens,et al. The pls Package: Principal Component and Partial Least Squares Regression in R , 2007 .
[23] I. Helland,et al. Comparison of Prediction Methods when Only a Few Components are Relevant , 1994 .
[24] L. Trejo,et al. Kernel Partial Least Squares Regression in Reprodu ingKernel , 2001 .
[25] William R DeTar,et al. AIRBORNE REMOTE SENSING TO DETECT PLANT WATER STRESS IN FULL CANOPY COTTON , 2006 .
[26] K. Omasa,et al. Estimating vertical plant area density profile and growth parameters of a wheat canopy at different growth stages using three-dimensional portable lidar imaging , 2009 .
[27] S. Wold,et al. PLS-regression: a basic tool of chemometrics , 2001 .
[28] W. Cao,et al. Monitoring leaf photosynthesis with canopy spectral reflectance in rice , 2005, Photosynthetica.
[29] Gamal ElMasry,et al. Predicting quality and sensory attributes of pork using near-infrared hyperspectral imaging. , 2012, Analytica chimica acta.
[30] G. Carter. Reflectance Wavebands and Indices for Remote Estimation of Photosynthesis and Stomatal Conductance in Pine Canopies , 1998 .
[31] T. Næs,et al. Canonical partial least squares—a unified PLS approach to classification and regression problems , 2009 .
[32] Chaichoke Vaiphasa,et al. Consideration of smoothing techniques for hyperspectral remote sensing , 2006 .
[33] Bani K. Mallick,et al. Hyperspectral remote sensing of plant biochemistry using Bayesian model averaging with variable and band selection , 2013 .
[34] Yuri A. Gritz,et al. Relationships between leaf chlorophyll content and spectral reflectance and algorithms for non-destructive chlorophyll assessment in higher plant leaves. , 2003, Journal of plant physiology.
[35] A. Skidmore,et al. Smoothing vegetation spectra with wavelets , 2004 .
[36] Roman Rosipal,et al. Kernel Partial Least Squares Regression in Reproducing Kernel Hilbert Space , 2002, J. Mach. Learn. Res..
[37] B. Bondada. Micromorpho-Anatomical Examination of 2,4-D Phytotoxicity in Grapevine (Vitis vinifera L.) Leaves , 2011, Journal of Plant Growth Regulation.
[38] P. Tian,et al. Integration of monthly water balance modeling and nutrient load estimation in an agricultural catchment , 2011, International Journal of Environmental Science and Technology.
[39] Pablo J. Zarco-Tejada,et al. Temporal and Spatial Relationships between within-field Yield variability in Cotton and High-Spatial Hyperspectral Remote Sensing Imagery , 2005 .
[40] Anming Bao,et al. Different units of measurement of carotenoids estimation in cotton using hyperspectral indices and partial least square regression , 2014 .
[41] J. Keeling,et al. Cotton Growth and Yield Response to Simulated 2,4-D and Dicamba Drift , 2009, Weed Technology.