Agriculture Reference
In-Depth Information
Mallarino, A. P. and D. J. Wittry. 2000. Identifying cost-effective soil sampling schemes
for variable-rate fertilization and liming. In Proceedings of the Fifth International
Conference on Precision Agriculture , Minneapolis, MN, USA.
Marquering, J., and S. Reusch. 1997. On-line fertilizing: sensor and application technique for
site-specific nitrogen fertilisation. VDI Berichte 1356:93-96.
Mohebbi, M., M. R. Akbarzadeh, F. Shahidi, M. Moussavi, and H. B. Ghoddusi. 2009.
Computer vision systems (CVS) for moisture content estimation in dehydrated shrimp.
Computers and Electronics in Agriculture 69(2):128-134.
Müller, K., U. Böttcher, F. Meyer-Schatz, and H. Kage. 2008. Analysis of vegetation indi-
ces derived from hyperspectral reflection measurements for estimating crop can-
opy parameters of oilseed rape ( Brassica napus L.). Biosystems Engineering 101:
172-182.
Narciso, G., and E. J. Schmidt. 1999. Identification and classification of sugarcane based
on satellite remote sensing. Proceedings of the South African Sugar Technologists
Association 73:189-194.
Nelson, R., W. Krabill, and J. Tonelli. 1988. Estimating forest biomass and volume using air-
borne laser data. Remote Sensing of Environment 24(2):247-267.
Newcome, L. R. 2004. Unmanned Aviation: A Brief History of Unmanned Aerial Vehicles . 1st
ed. American Institute of Aeronautics and Astronautics, Inc., Reston, VA.
Nilsson, M. 1996. Estimation of tree heights and stand volume using an airborne lidar system.
Remote Sensing of Environment 56(1):1-7.
Qiu, Z. J., H. Y. Song, Y. He, and H. Fang. 2007. Variation rules of the nitrogen content of the
oilseed rape at growth stage using SPAD and visible-NIR. Transactions of the CASE
23(7):150-154.
Qiu, Z. J., Y. He, X. F. Ge, and L. Feng. 2003. Development of soil moisture content measuring
instrument based on GPS position. Journal of Zhejiang Agricultural University (Agric.
& Life Sci.) 29(2):135-138.
Rango, A., A. S. Laliberte, C. Steele et al. 2006. Using unmanned aerial vehicles for range-
lands: current applications and future potentials. Environmental Practice 8:159-168.
Robert, P. C. 2002. Precision agriculture: a challenge for crop nutrition management. Plant
and Soil 247:143-149.
Sader, S. A., R. B. Waide, W. T. Lawrence, and A. T. Joyce. 1989. Tropical forest biomass and
successional age class relationships to a vegetation index derived from Landsat TM data.
Remote Sensing of Environment 28:143-156.
Santos, J. R., C. C. Freitas, L. S. Araujo et al. 2003. Airborne P-band SAR applied to the
aboveground biomass studies in the Brazilian tropical rainforest. Remote Sensing of
Environment 87(4):482-493.
Schmidt, E. J., C. Gers, G. Narciso, and P. Frost. 2001. Remote sensing in the South African
sugar industry. Proceedings International Society of Sugar Cane Technologists
24(2):241-245.
Schowengerdt, R. A. 1997. Remote Sensing: Models and Methods for Image Processing . 2nd
ed. Academic Press, San Diego, CA.
Schwarz, J., K. C. Kersebaum, H. Reuter, O. Wendroth, and P. Jürschik. 2001. Site-specific
fertilizer application with regard to soil and plant parameters. In Proceedings of the
3rd European Conference on Precision Agriculture . G. Grenier, and S. Blackmore, eds:
AGRO, Montpellier, France.
Shimabukuro, Y. E., V. C. Carvalho, and B. F. T. Rudorff. 1997. NOAA-AVHRR data pro-
cessing for the mapping of vegetation cover. International Journal of Remote Sensing
18(3):671-677.
Sinfield, J. V., D. Fagerman, and O. Colic. 2010. Evaluation of sensing technologies for on-
the-go detection of macro-nutrients in cultivated soils. Computers and Electronics in
Agriculture 70(1):1-18.
Search WWH ::




Custom Search