The sustainability of agricultural production in the twenty-first century, both in industrialized and developing countries, benefits from the integration of farm management with information technology such that individual plants, rows, or subfields may be endowed with a singular “identity.” This approach approximates the nature of agricultural processes to the engineering of industrial processes. In order to cope with the vast variability of nature and the uncertainties of agricultural production, the concept of crop biometrics is defined as the scientific analysis of agricultural observations confined to spaces of reduced dimensions and known position with the purpose of building prediction models. This article develops the idea of crop biometrics by setting its principles, discussing the selection and quantization of biometric traits, and analyzing the mathematical relationships among measured and predicted traits. Crop biometric maps were applied to the case of a wine-production vineyard, in which vegetation amount, relative altitude in the field, soil compaction, berry size, grape yield, juice pH, and grape sugar content were selected as biometric traits. The enological potential of grapes was assessed with a quality-index map defined as a combination of titratable acidity, sugar content, and must pH. Prediction models for yield and quality were developed for high and low resolution maps, showing the great potential of crop biometric maps as a strategic tool for vineyard growers as well as for crop managers in general, due to the wide versatility of the methodology proposed.
References
[1]
Cox-Foster, D.; van Engelsdorp, D. Saving the honeybee. Sci. Am. 2009, 300, 40–47.
[2]
Freebody, M. Farmers Fuel Growing Market for Imaging Systems. Available online: http://www.photonics.com/Article.aspx?AID=54039 (accessed on 22 September 2013).
[3]
Burks, T.F.; Schmoldt, D.L.; Steiner, J.J. U.S. Specialty crops at a crossroad. Resource 2008, 15, 5–6.
[4]
P?lling, B.; Herold, L.; Volgmann, A.; Wurbs, A.; Werner, A. Assessing the potential use of Precision Farming-technologies in the EU. Proceedings of AgEng International Conference on Agricultural Engineering, Clermont-Ferrand, France, 6–9 September 2010.
[5]
Fountas, S.; Blackmore, S.B.; Ess, D.; Hawkins, S.; Blumhoff, G.; Lowenberg-DeBoer, J.; Sorensen, C.G. Farmers experience with precision agriculture in denmark and the US eastern corn belt. Precis. Agric. 2005, 6, 121–141.
[6]
Marshall, L.S. Camera Advances Drive Scientific Research. Available online: http://www.photonics.com/Article.aspx?AID=51848 (accessed on 22 September 2013).
[7]
Fisher, G. Bringing Space Science Down to Earth. Available online: http://www.insidegnss.com/node/3185 (accessed on 22 September 2013).
[8]
Bulanon, D.M.; Burks, T.F.; Alchanatis, V. Analysis of the Thermal Temporal Variation in the Citrus Canopy. Proceedings of ASABE Annual International Meeting, Providence, RI, USA, 29 June–2 July 2008.
Thorp, K.; Andrade-Sánchez, P.; Gore, M.; White, J.; French, A. Information technologies for field-based high-throughput phenotyping. Resource 2012, 19, 8–9.
[11]
Ruixiu, S.; Thomasson, J.A.; Hanks, J.; Wooten, J. Ground-based sensing system for weed mapping in cotton. Comput. Electron. Agric. 2008, 60, 31–38.
[12]
Monta, M.; Kondo, N.; Shibano, Y. Agricultural robot in grape production system. Proceedings of the IEEE International Conference on Robotics and Automation, Nagoya, Japan, 21–27 May 1995; pp. 2504–2509.
Coffey, V.C. Lasers Find Varied Uses in Space Applications. Available online: http://www.photonics.com/Article.aspx?AID=52252 (accessed on 22 September 2013).
[15]
Rovira-Más, F.; Zhang, Q.; Hansen, A.C. Mechatronics and Intelligent Systems for Off-Road Vehicles, 1st ed. ed.; Springer-Verlag: London, UK, 2010.
[16]
Rovira-Más, F. Global-referenced navigation grids for off-road vehicles and environments. Robot. Autonom. Syst. 2012, 60, 278–287.
[17]
Rovira-Más, F.; Banerjee, R. GPS data conditioning for enhancing reliability of automated off-road vehicles. J. Automob. Eng. 2013, 227, 78–92.
[18]
Sáiz-Rubio, V.; Rovira-Más, F. Dynamic segmentation to estimate vine vigor from ground images. Span. J. Agric. Res. 2012, 10, 596–604.
[19]
Mason, R.L.; Gunst, R.F.; Hess, J.L. Statistical Design and Analysis of Experiments, 2nd ed. ed.; John Wiley & Sons: New Jersey, NJ, USA, 2003.
Rovira-Más, F. Sensor architecture and task classification for agricultural vehicles and environments. Sensors 2010, 10, 11226–11247.
[22]
Pellenc, R. Method and Device for Analysis of the Structure and the Composition of Cultured Hedges Such as for Example rows of Vines. US Patent 7652766 B2, 2010.
[23]
Cox, J. From Vines to Wines; Storey Publishing: North Adams, MA, USA, 1999.