983
Views
33
CrossRef citations to date
0
Altmetric
Crop Physiology & Ecology

Continuous Monitoring of Visible and Near-Infrared Band Reflectance from a Rice Paddy for Determining Nitrogen Uptake Using Digital Cameras

, , , , , & show all
Pages 293-306 | Received 10 Jul 2008, Accepted 11 Dec 2008, Published online: 03 Dec 2015

References

  • Akiyama, T., and Kawamura, K. 2003. Study of cloud cover ratio of Landsat-5 for the application on agriculture and forestry. J. Jpn. Soc. Photogramm. Remote Sens. 42 : 29–34*.
  • Akiyama, T. 2007. Remote sensing for agricultural census and crop growth management. J. Jpn. Agric. Systems Soc. 23 : 103–110*.
  • Asaka, D., Hayashi, T. and Shiga, H. 2006. The map for grain protein content of winter wheat using satellite observed NDVI at maturing stage. J. Jpn. Agric. Systems Soc. 22 : 89–98*.
  • Asrar, G., Kanemasu, E. T. and Yoshida, M. 1985. Estimation of leaf area index from spectral reflectance of wheat under different cultural practices and solar angles. Remote Sens. Environ. 17 : 1–11.
  • Baret, F. and Guyot, G. 1991. Potentials and limits of vegetation indices for LAI and APAR assessment. Remote Sens. Environ. 35 : 161–173.
  • Casadesus, J., Kaya, Y., Bort, J., Nachit, M. M., Araus, J. L., Amor, S., Ferrazzano, G., Maalouf, F., Maccaferri, M., Martos, V., Ouabbou, H. and Villegas, D. 2007. Using vegetation indices derived from conventional digital cameras as selection criteria for wheat breeding in water-limited environments. Ann. Appl. Biol. 150 : 227–236.
  • Evri, M., Akiyama, T. and Kawamura, K. 2008. Spectrum analysis of hyperspectral red edge position to predict rice biophysical parameters and grain weight. J. Jpn. Soc. Photogramm. Remote Sens. 47 : 4–15.
  • Holben, B., Tucker, C.J. and Fan, C-J. 1980. Spectral assessment of soybean leaf area and leaf biomass. Photogramm. Eng. Remote Sens. 46 : 651–656.
  • Honeycutt, R.K. and Chaldu, R.S. 1970. The wavelength dependence of the gradient for three Kodak spectroscopic emulsions. AAS Photo-Bull. 2 : 14–15.
  • Häme, T., Salli, A., Andersson, K. and Lohi, A. 1997. A new methodology for the estimation of biomass of coniferdominated boreal forest using NOAA AVHRR data. Int. J. Remote Sens. 18 : 3211–3243.
  • Ishihara, M., Lee, Y., Abdullah, H. M., Goto, S, Kurumado, K. and Akiyama, T. 2008. Phenology analysis of vegetation in the river basin. J. Jpn. Agric. Systems Soc. 24 : 113–119*.
  • Ishitsuka, N. and Yasuda, Y. 2007. Features of remote sensing data: from farmland observation to system science. J. Jpn. Agric. Systems Soc. 23 : 93–101*.
  • Jia, L., Chen, X., Zhang, F., Buerkert, A. and Römheld, V. 2004. Use of digital camera to assess nitrogen status of winter wheat in the Northern China Plain. J. Plant Nutr. 27 : 441–450.
  • Kawashima, S. and Nakatani, M. 1998. An algorithm for estimating chlorophyll content in leaves using a video camera. Ann. Bot. 81 : 49–54.
  • Kimes, D.S. 1983. Dynamics of directional reflectance factor distributions for vegetation canopies. Appl. Opt. 22 : 1364–1372.
  • Kimes, D.S., Nelson, R.F., Manry, M.T. and Fung, A.K. 1998. Attributes of neural networks for extracting continuous vegetation variables from optical and radar measurements. Int. J. Remote Sens. 19 : 2639–2663.
  • Kosaka, N., Minekawa, Y., Uto, K., Kosugi, Y., Oda, K. and Saito, G. 2007. Estimation of bacterial pustule on soybean using crane-mounted hyperspectral sensor data. J. Jpn. Soc. Photogramm. Remote Sens. 46 : 16–24.*
  • Ku, H.H., Kim, S.H., Choi, K.S., Eom, H-Y., Lee, S-E., Yun, S-G. and Kim, T. W. 2004. Nondestructive and rapid estimation of chlorophyll content in rye leaf using digital camera. Korean J. Crop Sci. 49 : 41–45.
  • Kunii, Y. and Murai, S. 2008. Ideal situation for camera calibration using amateur digital cameras. J. Jpn. Soc. Photogramm. Remote Sens. 47 : 44–51*.
  • Martin, R.D. Jr. and Heilman, J.L. 1986. Spectral reflectance patterns of flooded rice. Photogramm. Eng. Remote Sens. 52 : 1885–1890.
  • Matsuda, M., Ozawa, S., Hosaka, Y., Kaneda, K. and Yamashita, H. 2003. Estimation of plant growth in paddy field based on proximal remote sensing – Measurement of leaf nitrogen contents by using digital camera. J. Remote Sens. Soc. Jpn. 23 : 506–515*.
  • Mutanga, O. and Skidmore, A.K. 2004. Narrow band vegetation indices overcome the saturation problem in biomass estimation. Int. J. Remote Sens. 10 : 3999–4014.
  • Nakatani, M. and Kawashima, S. 1994. An attempt to assess leaf color of winter cereals using a simple video system. Jpn. J. Crop Sci. 63 : 42–47*.
  • Oh-e, I., Saitoh, K. and Kuroda, T. 2007. Effects of high temperature on growth, yield and dry-matter production of rice grown in the paddy field. Plant Prod. Sci. 10 : 412–422.
  • Omine, M. 2007. Spectrum digital camera for growth sensing of soybeans. J. Jpn. Soc. Agric. Machinery 69 : 18–20**.
  • Patel, N.K., Singh, T.P., Sahai, B. and Patel, M.S. 1985. Spectral response of rice crop and its relation to yield and yield attributes. Int. J. Remote Sens. 6 : 657–664.
  • Purcell, L. C. 2000. Soybean canopy coverage and light interception measurements using digital imagery. Crop Sci. 40 :834–837.
  • Richardson, A.J., Wiegand, C.L., Arkin, G.F., Nixon, P.R. and Gerbermann, A. H. 1982. Remotely-sensed spectral indicators of sorghum development and their use in growth modeling. Agric. Meteorol. 26 : 11–23.
  • Richardson, A.D., Jenkins, J.P., Braswell, B.H., Hollinger, D. Y., Ollinger, S.V. and Smith, M.-L. 2007. Use of digital webcam images to track spring green-up in a deciduous broadleaf forest. Oecologia 152 : 323–334.
  • Sakamoto, T., Yokozawa, M., Toritani, H., Shibayama, M., Ishitsuka, N. and Ohno, H. 2005. A crop phenology detection method using time-series MODIS data. Remote Sens. Environ. 96 : 366–374.
  • Shibayama, M. and Wiegand, C.L. 1985. View azimuth and zenith, and solar angle effects on wheat canopy reflectance. Remote Sens. Environ. 18 : 91–103.
  • Shibayama, M. and Akiyama, T. 1986. A spectroradiometer for field use. VII. Radiometric estimation of nitrogen levels in field rice canopies. Jpn. J. Crop Sci. 55 : 439–445.
  • Shibayama, M. and Akiyama, T. 1989. Seasonal visible, near-infrared and mid-infrared spectra of rice canopies in relation to LAI and above-ground dry phytomass. Remote Sens. Environ. 27 : 119–127.
  • Shibayama, M., Salli, A., Häme, T., Iso-Iivari, L., Heino, S., Alanen, M., Morinaga, S., Inoue, Y. and Akiyama, T. 1999. Detecting phenophases of subarctic shrub canopies by using automated reflectance measurements. Remote Sens. Environ. 67 : 160–180.
  • Takemine, S., Rikimaru, A., Takahashi, K. and Higuchi, Y. 2007. Basic study for estimation of nitrogen content of rice plants from vegetation cover rate of rice obtained by a simple image measurement. J. Jpn. Soc. Photogramm. Remote Sens. 46 : 61–65*.
  • Tanaka, M., Goto, S., Maki, M., Akiyama, T., Muramoto, Y. and Yoshida, K. 2008. Estimation and validation of leaf chlorophyll concentration in winter wheat at heading to anthesis stage using ground-based and aerial hyperspectral data. J. Jpn. Soc. Photogramm. Remote Sens. 47 : 39–49*.
  • Wakamatsu, K., Sasaki, O., Uezono, I. and Tanaka, A. 2007. Effects of high air temperature during the ripening period on the grain quality of rice in warm region of Japan. Jpn. J. Crop Sci. 76 : 71–78*.
  • Yagi, K. and Minami, K. 2005. Challenges of reducing excess nitrogen in Japanese agroecosystems. Science in China. Ser. C. Life Sci. 48 : 928–936.
  • Yan, D., Zhu, Y., Wang, S. and Cao, W. 2006. A quantitative knowledge-based model for designing suitable growth dynamics in rice. Plant Prod. Sci. 9 : 93–105.
  • Zhou, Q. and Robson, M. 2001. Automated rangeland vegetation cover and density estimation using ground digital images and a spectral-contextual classifier. Int. J. Remote Sens. 22 : 3457–3470.
  • Zhu, Y., Tian, Y., Yao, X., Liu, X. and Cao, W. 2007. Analysis of common canopy reflectance spectra for indicating leaf nitrogen concentrations in wheat and rice. Plant Prod. Sci. 10 : 400–411.