Selecting optimal hyperspectral bands to discriminate nitrogen status in durum wheat: a comparison of statistical approaches
暂无分享,去创建一个
A. Castrignanò | A. Troccoli | G. Buttafuoco | G. Buttafuoco | A. Castrignanò | B. Basso | A. Troccoli | A. M. Stellacci | A. M. Stellacci | B. Basso
[1] C. Jun,et al. Performance of some variable selection methods when multicollinearity is present , 2005 .
[2] Yoshio Inoue,et al. Diagnostic mapping of canopy nitrogen content in rice based on hyperspectral measurements , 2012 .
[3] Guofeng Wu,et al. Estimating leaf nitrogen concentration in heterogeneous crop plants from hyperspectral reflectance , 2015 .
[4] J. G. Lyon,et al. Hyperspectral Remote Sensing of Vegetation , 2011 .
[5] J. H. Schuenemeyer,et al. Statistics for Earth and Environmental Scientists , 2011 .
[6] P. Thenkabail,et al. Hyperspectral Vegetation Indices and Their Relationships with Agricultural Crop Characteristics , 2000 .
[7] Antonio Gallo,et al. Combined approach based on principal component analysis and canonical discriminant analysis for investigating hyperspectral plant response , 2012 .
[8] Fumin Wang,et al. Identification of optimal hyperspectral bands for estimation of rice biophysical parameters. , 2008, Journal of integrative plant biology.
[9] B. Kowalski,et al. Partial least-squares regression: a tutorial , 1986 .
[10] B. Mistele,et al. Comparison of active and passive spectral sensors in discriminating biomass parameters and nitrogen status in wheat cultivars , 2011 .
[11] D. G. Westfall,et al. Evaluation of two ground-based active crop canopy sensors in maize: growth stage, row spacing, and sensor movement speed. , 2010 .
[12] J.,et al. A decimal code for the growth stages of cereals , 2022 .
[13] R. Tamborrino,et al. Discrimination of tomato plants under different irrigation regimes: analysis of hyperspectral sensor data , 2015 .
[14] J. Campbell. Introduction to remote sensing , 1987 .
[15] Llorenç Cabrera-Bosquet,et al. NDVI as a potential tool for predicting biomass, plant nitrogen content and growth in wheat genotypes subjected to different water and nitrogen conditions , 2011 .
[16] Raffaele Casa,et al. Operational unmanned aerial vehicle assisted post-emergence herbicide patch spraying in maize: a field study , 2015 .
[17] James A. Brass,et al. Imaging from an unmanned aerial vehicle: agricultural surveillance and decision support , 2004 .
[18] J. Durbin,et al. Testing for serial correlation in least squares regression. II. , 1950, Biometrika.
[19] M. Boschetti,et al. Plant nitrogen concentration in paddy rice from field canopy hyperspectral radiometry , 2009 .
[20] Y. Zhu,et al. Detecting leaf nitrogen content in wheat with canopy hyperspectrum under different soil backgrounds , 2014, Int. J. Appl. Earth Obs. Geoinformation.
[21] R. Fisher. THE USE OF MULTIPLE MEASUREMENTS IN TAXONOMIC PROBLEMS , 1936 .
[22] Rasmus Bro,et al. Variable selection in regression—a tutorial , 2010 .
[23] S. Wold,et al. PLS-regression: a basic tool of chemometrics , 2001 .
[24] F. López-Granados,et al. Multi-temporal mapping of the vegetation fraction in early-season wheat fields using images from UAV , 2014 .
[25] R. Casa,et al. Chlorophyll estimation in field crops: an assessment of handheld leaf meters and spectral reflectance measurements , 2014, The Journal of Agricultural Science.
[26] M. A. Moreno,et al. Applications of georeferenced high-resolution images obtained with unmanned aerial vehicles. Part I: Description of image acquisition and processing , 2014, Precision Agriculture.
[27] J. Dungan,et al. Exploring the relationship between reflectance red edge and chlorophyll content in slash pine. , 1990, Tree physiology.
[28] A. Gitelson,et al. Application of Spectral Remote Sensing for Agronomic Decisions , 2008 .
[29] M. Ashton,et al. Accuracy assessments of hyperspectral waveband performance for vegetation analysis applications , 2004 .
[30] Prasad S. Thenkabail,et al. Evaluation of Narrowband and Broadband Vegetation Indices for Determining Optimal Hyperspectral Wavebands for Agricultural Crop Characterization , 2002 .
[31] Sushma Panigrahy,et al. Use of hyperspectral data to assess the effects of different nitrogen applications on a potato crop , 2007, Precision Agriculture.
[32] Weixing Cao,et al. Estimating leaf nitrogen concentration with three-band vegetation indices in rice and wheat , 2012 .
[33] Limsoon Wong,et al. DATA MINING TECHNIQUES , 2003 .
[34] D. Deering. Rangeland reflectance characteristics measured by aircraft and spacecraft sensors , 1979 .
[35] Fumin Wang,et al. Optimal waveband identification for estimation of leaf area index of paddy rice , 2008, Journal of Zhejiang University SCIENCE B.
[36] Alfredo Huete,et al. Advances in hyperspectral remote sensing of vegetation and agricultural croplands: Chapter 1 , 2011 .
[37] J. Durbin,et al. Testing for serial correlation in least squares regression. I. , 1950, Biometrika.
[38] Trevor Hastie,et al. Generalized linear and generalized additive models in studies of species distributions: setting the scene , 2002 .
[39] Tung Fung,et al. Band Selection Using Hyperspectral Data of Subtropical Tree Species , 2003 .
[40] Hogervorst,et al. Hyperspectral Data Analysis and Visualisation , 2011 .
[41] Gunther Wyszecki,et al. Color Science: Concepts and Methods, Quantitative Data and Formulae, 2nd Edition , 2000 .
[42] W. S. Lee,et al. DETERMINATION OF SIGNIFICANT WAVELENGTHS AND PREDICTION OF NITROGEN CONTENT FOR CITRUS , 2005 .
[43] Z. Cerovic,et al. Optically assessed contents of leaf polyphenolics and chlorophyll as indicators of nitrogen deficiency in wheat (Triticum aestivum L.) , 2005 .
[44] J. Schjoerring,et al. Reflectance measurement of canopy biomass and nitrogen status in wheat crops using normalized difference vegetation indices and partial least squares regression , 2003 .