165
Views
6
CrossRef citations to date
0
Altmetric
Articles

Spectral Reflectance Models for Characterizing Winter Wheat Genotypes

, , , , , , , , & show all
Pages 176-195 | Received 18 Sep 2015, Accepted 03 Jan 2016, Published online: 30 Mar 2016

References

  • Abdel-Rahman, E. M., F. B. Ahmed, and M. Van Den Berg. 2008. Imaging spectroscopy for estimating sugarcane leaf nitrogen concentration. Proc. SPIE 7104, Remote Sensing for Agriculture, Ecosystems, and Hydrology X, 71040V.
  • Abdel-Rahman, E. M., F. B. Ahmed, and M. Van Den Berg. 2010. Estimation of sugarcane leaf nitrogen concentration using in situ spectroscopy. International Journal Applied Earth Observation and Geoinformation 12:S52–S57.
  • Aparicio, N., D. Villegas, J. L. Araus, J. Casadesús, and C. Royo. 2002. Relationship between growth traits and spectral vegetation indices in durum wheat. Crop Science 42:1547–55. doi:10.2135/cropsci2002.1547.
  • Aparicio, N., D. Villegas, J. Casadesus, J. L. Araus, and C. Royo. 2000. Spectral vegetation indices as nondestructive tools for determining durum wheat yield. Agronomy Journal 92:83–91. doi:10.2134/agronj2000.92183x.
  • Araus, J. L., J. Casadesus, and J. Bort. 2001. Recent tools for the screening of physiological traits determining yield. In Application of Physiology in Wheat Breeding, ed. M. P. Reynolds, J. I. Ortiz–Monasterio, and A. McNab, 59–77. Mexico, DF: CIMMYT.
  • Araus, J. L., G. A. Slafer, M. P. Reynolds, and C. Royo. 2002. Plant breeding and drought in C3 cereals: What should we breed for? Annals of Botany 89:925–40. doi:10.1093/aob/mcf049.
  • Babar, M. A., M. P. Reynolds, M. Van Ginkel, A. R. Klatt, W. R. Raun, and M. L. Stone. 2006. Spectral reflectance indices as potential indirect selection criteria for wheat yield under irrigation. Crop Science 46:578–88. doi:10.2135/cropsci2005.0059.
  • Best, R. G., and J. C. Harlan. 1985. Spectral estimation of green leaf area index of oats. Remote Sensing of Environment 17:27–36. doi:10.1016/0034-4257(85)90110-5.
  • Bort, J., J. C. Araus, and J. Casadesus. 2005. Physiologically related tools for the assessment of irrigation systems performance monitoring water status in crop plants. Options Méditéranéennes 52:265–78.
  • Botterill, L. C., and M. Fisher. 2003. Beyond drought, people, policy and perspectives. Clayton, Australia: CSIRO Publishing.
  • Broge, N. H., and E. Leblanc. 2001. Comparing prediction power and stability of broadband and hyperspectral vegetation indices for estimation of green leaf area index and canopy chlorophyll density. Remote Sensing of Environment 76:156–72.
  • Casadesús, J., E. Tambussi, C. Royo, and J. L. Araus. 2000. Growth assessment of individual plants by an adapted remote sensing technique. Options Méditéranéennes 40:129–32.
  • Cattivelli, L., F. Rizza, F. W. Badeck, E. Mazzucotelli, A. M. Mastrangelo, E. Francia, and A. M. Stanca. 2008. Drought tolerance improvement in crop plants: An integrated view from breeding to genomics. Field Crops Research 105:1–14. doi:10.1016/j.fcr.2007.07.004.
  • Chapman, S. C. 2008. Use of crop models to understand genotype by environment interactions for drought in real-world and simulated plant breeding trials. Euphytica 161:195–208. doi:10.1007/s10681-007-9623-z.
  • Clevers, J. G. P. W. 1988. The derivation of a simplified reflectance model for the estimation of Leaf Area Index. Remote Sensing of Environment 25:53–69. doi:10.1016/0034-4257(88)90041-7.
  • Clevers, J. G. P. W., S. M. De Jong, G. F. Epema, F. D. Van Der Meer, W. H. Bakker, A. K. Skidmore, and K. H. Scholte. 2002. Derivation of the red edge index using the MERIS standard band setting. International Journal of Remote Sensing 23:3169–84. doi:10.1080/01431160110104647.
  • Colaizzi, P. D., P. H. Gowda, T. H. Marek, and D. O. Porter. 2009. Irrigation in the Texas High Plains: A brief history and potential reductions in demand. Irrigation and Drainage 58:257–74. doi:10.1002/ird.v58:3.
  • De Jong, S. M. 1998. Imaging spectrometry for monitoring tree damage caused by volcanic activity in the long valley caldera, California. ITC Journal (International Institute for Geo-Information Science and Earth Observation) 1:1–10.
  • Demetriades-Shah, T. H., M. D. Steven, and J. A. Clark. 1990. High resolution derivative spectra in remote sensing. Remote Sensing of Environment 33:55–64. doi:10.1016/0034-4257(90)90055-Q.
  • Elliot, G. A., and K. L. Regan. 1993. Use of reflectance measurements to estimate early cereal biomass production on sand plain soils. Australian Journal of Experimental Agriculture 33:179–83. doi:10.1071/EA9930179.
  • Elvidge, C. D., and Z. Chen. 1995. Comparison of broad-band and narrow-band red and near-infrared vegetation indices. Remote Sensing of Environment 54:38–48. doi:10.1016/0034-4257(95)00132-K.
  • Gao, Y. H., L. F. Chen, X. Zhou, L. Li, Q. H. Liu, and G. L. Tian. 2008. Analysis on optimal bands for retrieval of mixed canopy chlorophyll content based on remote sensing. Remote Sensing Spatial Information Science 37:1391–96.
  • Gutierrez, M., M. P. Reynolds, and A. R. Klatt. 2010. Association of water spectral indices with plant and soil water relations in contrasting wheat genotypes. Journal of Experimental Botany 61:3291–303. doi:10.1093/jxb/erq156.
  • Hall, F. G., K. F. Huemmrich, and S. N. Goward. 1990. Use of narrow-band spectra to estimate the fraction of absorbed photosynthetically active radiation. Remote Sensing of Environment 32:47–54.
  • Hansen, P. M., and J. K. Schjoerring. 2003. Reflectance measurement of canopy biomass and nitrogen status in wheat crops using normalized difference vegetation indices and partial least squares regression. Remote Sensing of Environment 86:542–53. doi:10.1016/S0034-4257(03)00131-7.
  • Hatfield, J. L., E. T. Kanemasu, G. Asrar, R. D. Jackson, P. J. Pinter, R. J. Reginato Jr, and S. B. Idso. 1985. Leaf-area estimates from spectral measurements over various planting dates of wheat. International Journal of Remote Sensing 6:167–75. doi:10.1080/01431168508948432.
  • Kaufman, Y. J., and D. Tanre. 1992. Atmospherically resistant vegetation index (ARVI) for EOS-MODIS. IEEE Transactions on Geoscience and Remote Sensing 30:261–70.
  • Khakwani, A. A., M. D. Dennett, and M. Munir. 2011. Drought tolerance screening of wheat varieties by inducing water stress conditions. Songklanakarin Journal Science Technology 33:135–42.
  • Köksal, E. S. 2011. Hyperspectral reflectance data processing through cluster and principal component analysis for estimating irrigation and yield related indicators. Agricultural Water Management 98:1317–28.
  • Li, F., Y. Miao, S. D. Hennig, M. L. Gnyp, X. Chen, L. Jia, and G. Bareth. 2010. Evaluating hyperspectral vegetation indices for estimating nitrogen concentration of winter wheat at different growth stages. Precision Agriculture 11:335–57.
  • Mather, P., and B. Tso. 2003. Classification methods for remotely sensed data. CRC Press, Boca Raton, Florida, USA.
  • Moulin, S., and M. Guérif. 1999. Impacts of model parameter uncertainties on crop reflectance estimates: A regional case study on wheat. International Journal of Remote Sensing 20:213–18.
  • Orr, P. M., D. C. Warner, J. V. O’brien, and G. R. Johnson. 1998. Methods for classifying plants for evaluation and breeding programs by use of remote sensing and image analysis technology. U.S. Patent No. 5,764,819. Washington, DC.
  • Osborne, S. L., J. S. Schepers, D. D. Francis, and M. R. Schlemmer. 2002. Use of spectral radiance to estimate in-season biomass and grain yield in nitrogen and water stressed corn. Crop Science 42:165–71.
  • Peñuelas, J., and I. Filella. 1998. Visible and near-infrared reflectance techniques for diagnosing plant physiological status. Trends in Plant Science 3:151–56.
  • Peñuelas, J., J. A. Gamon, A. L. Fredeen, J. Merino, and C. B. Field. 1994. Reflectance indices associated with physiological changes in nitrogen-and water-limited sunflower leaves. Remote Sensing of Environment 48:135–46.
  • Peñuelas, J., J. Piñol, R. Ogaya, and I. Filella. 1997. Estimation of plant water concentration by the reflectance water index WI (R900/R970). International Journal Remote Sensing 18:2869–75.
  • Pradhan, G., Q. Xue, S. Y. Liu, J. C. Rudd, K. E. Jessup, and J. R. Mahan. 2014. Cooler canopy temperature contributed to higher yield in new drought tolerant cultivars. Crop Science 54:2275–84.
  • Prasad, B., B. F. Carver, M. L. Stone, M. A. Babar, W. R. Raun, and A. R. Klatt. 2007. Genetic analysis of indirect selection for winter wheat grain yield using spectral reflectance indices. Crop Science 47:1416–25.
  • Rajaram, S. 2001. Prospects and promise of wheat breeding in the 21st century. Euphytica 119:3–15.
  • Reddy, S. K., S. Y. Liu, J. C. Rudd, Q. Xue, P. Payton, S. A. Finlayson, J. R. Mahan, A. Akhunova, S. V. Holalu, and N. Lu. 2014. Physiology and transcriptomics of water-deficit stress responses in wheat cultivars, TAM 111 and TAM 112. Journal of Plant Physiology 171:1289–98.
  • Rizza, F., F. W. Badeck, L. Cattivelli, O. Lidestri, N. Di Fonzo, and A. M. Stanca. 2004. Use of a water stress index to identify barley genotypes adapted to rainfed and irrigated conditions. Crop Science 44:2127–37.
  • Royo, C., N. Aparicio, D. Villegas, J. Casadesus, P. Monneveux, and J. L. Araus. 2003. Usefulness of spectral reflectance indices as durum wheat yield predictors under contrasting Mediterranean conditions. International Journal Remote Sensing 24:4403–19.
  • Rudd, J. C. 2009. Success in wheat improvement. In Wheat: Science and trade, ed. B. F. Carver. Ames, IA: Wiley-Blackwell.
  • Rudd, J. C., R. N. Devkota, A. K. Fritz, J. A. Baker, D. E. Obert, D. Worrall, and B. W. Seabourn. 2012. Registration of ‘TAM 401ʹ wheat. Journal of Plant Registrations 6:60–65.
  • Thenkabail, P. S., E. A. Enclona, M. S. Ashton, and B. Van Der Meer. 2004. Accuracy assessments of hyperspectral waveband performance for vegetation analysis applications. Remote Sensing of Environment 91:354–76.
  • Thenkabail, P. S., R. B. Smith, and E. De Pauw. 2000. Hyperspectral vegetation indices and their relationships with agricultural crop characteristics. Remote Sensing of Environment 71:158–82.
  • Thenkabail, P. S., R. B. Smith, and E. De Pauw. 2002. Evaluation of narrowband and broadband vegetation indices for determining optimal hyperspectral wavebands for agricultural crop characterization. Photogrammetric Engineering and Remote Sensing 68:607–22.
  • Tsai, F., and W. Philpot. 1998. Derivative analysis of hyperspectral data. Remote Sensing of Environment 66:41–51.
  • Unger, P. W., and F. B. Pringle. 1981. Pullman Soil: Distribution, Importance, Variability, and Management, Bulletin B-1372. College Station: Texas Agricultural Experiment Station, College Station, Texas, USA.
  • Xavier, A. C., B. F. T. Rudorff, M. A. Moreira, B. S. Alvarenga, J. G. D. Freitas, and M. V. Salomon. 2006. Hyperspectral field reflectance measurements to estimate wheat grain yield and plant height. Scientia Agricola 63:130–38.
  • Xue, Q., J. C. Rudd, S. Y. Liu, K. E. Jessup, R. N. Devkota, and J. R. Mahan. 2014. Yield determination and water use efficiency of wheat under water-limited conditions in the U.S. Southern High Plains. Crop Science 54:34–47.
  • Yang, X., J. Huang, and F. Wang. 2005. The estimation models of rape biomass yield using hyperspectral data. IEEE International, 3, 1900–03.
  • Yu, K., F. Li, M. L. Gnyp, Y. Miao, G. Bareth, and X. Chen. 2013. Remotely detecting canopy nitrogen concentration and uptake of paddy rice in the Northeast China Plain. ISPRS Journal of Photogrammetry and Remote Sensing 78:102–15.

Reprints and Corporate Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

To request a reprint or corporate permissions for this article, please click on the relevant link below:

Academic Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

Obtain permissions instantly via Rightslink by clicking on the button below:

If you are unable to obtain permissions via Rightslink, please complete and submit this Permissions form. For more information, please visit our Permissions help page.