Recent advances in sensing plant diseases for precision crop protection
Tóm tắt
Từ khóa
Tài liệu tham khảo
Bauriegel, E., Giebel, A., Geyer, M., Schmidt, U., & Herppich, W. B. (2011). Early detection of Fusarium infection in wheat using hyper-spectral imaging. Computer and Electronics in Agriculture, 75, 304–312.
Blackburn, G. A. (2007). Hyperspectral remote sensing of plant pigments. Journal of Experimental Botany, 58, 844–867.
Bock, C. H., Poole, G. H., Parker, P. E., & Gottwald, T. R. (2010). Plant disease severity estimated visually, by digital photography and image analysis, and by hyperspectral imaging. Critical Reviews in Plant Science, 29, 59–107.
Bongiovanni, R., & Lowenberg-Deboer, J. (2004). Precision agriculture and sustainability. Precision Agriculture, 5, 359–387.
Boquete, L., Ortega, S., Miguel-Jienez, J. M., Rodriguez-Ascariz, J. M., & Blanco, R. (2010). Automated detection of breast cancer in thermal infrared images, based on independent component analysis. Journal of Medical Systems, doi: 10.1007/s10916-010-9450-y
Bravo, C., Moushou, D., West, J., McCartney, A., & Ramon, H. (2003). Early disease detection in wheat fields using spectral reflectance. Biosystems Engineering, 84, 137–145.
Bürling, K., Hunsche, M., & Noga, G. (2011). Use of blue-green and chlorophyll fluorescence measurements for differentiation between nitrogen deficiency and pathogen infection in wheat. Journal of Plant Physiology, doi: 10.1016/j.jplph.2011.03.016
Carrol, M. W., Glaser, J. A., Hellmich, R. L., Hunt, T. E., Sappington, T. W., Calvin, D., et al. (2008). Use of spectral vegetation indices derived from airborne hyperspectral imagery for detection of European corn borer infestation in Iowa corn plots. Journal of Economic Entomology, 101, 1614–1623.
Carter, G. A., & Knapp, A. K. (2001). Leaf optical properties in higher plants: linking spectral characteristics to stress and chlorophyll concentration. American Journal of Botany, 88, 677–684.
Chaerle, L., & Van der Straeten, D. (2000). Imaging techniques and the early detection of plant stress. Trends in Plant Science, 5, 495–501.
Chaerle, L., Leinonen, I., Jones, H. G., & Van der Straeten, D. (2007). Monitoring and screening plant populations with combined thermal and chlorophyll fluorescence imaging. Journal of Experimental Botany, 58, 773–784.
Chaerle, L., Lenk, S., Leinonen, I., Jones, H. G., Van der Straeten, D., & Buschmann, C. (2009). Multi-sensor plant imaging: towards the development of a stress-catalogue. Biotechnology Journal, 4, 1152–1167.
Csefalvay, L., Di Gaspero, G., Matous, K., Bellin, D., Ruperti, B., & Olejnickova, J. (2009). Pre-symptomatic detection of Plasmopara viticola infection in grapevine leaves using chlorophyll fluorescence imaging. European Journal of Plant Pathology, 125, 291–302.
Delalieux, S., van Aardt, J., Keulemans, W., & Coppin, P. (2007). Detection of biotic stress (Venturia inaequalis) in apple trees using hyperspectral data: non-parametric statistical approaches and physiological implications. European Journal of Agronomy, 27, 130–143.
Franke, J., & Menz, G. (2007). Multi-temporal wheat disease detection by multi-spectral remote sensing. Precison Agriculture, 8, 161–172.
Galvao, L. S., Roberts, D. A., Formaggio, A. R., Numata, I., & Breunig, F. M. (2009). View angle effects on the discrimination of soybean varieties and on the relationships between vegetation indices and yield using off-nadir Hyperion data. Remote Sensing of Environment, 113, 846–856.
Gebbers, R., & Adamchuk, V. I. (2010). Precision agriculture and food security. Science, 327, 828–831.
Hillnhütter, C., & Mahlein, A.-K. (2008). Neue Ansätze zur frühzeitigen Erkennung und Lokalisierung von Zuckerrübenkrankheiten. Gesunde Pflanzen, 60, 143–149.
Hillnhütter, C., Mahlein, A.-K., Sikora, R. A., & Oerke, E.-C. (2011a). Remote sensing to detect plant stress induced by Heterodera schachtii and Rhizoctonia solani in sugar beet fields. Field Crops Research, 122, 70–77.
Hillnhütter, C., Mahlein, A.-K., Sikora, R. A., & Oerke, E.-C. (2011b). Use of imaging spectroscopy to discriminate symptoms caused by Heterodera schachtii and Rhizoctonia solani on sugar beet. Precision Agriculture, doi: 10.1007/s11119-011-9237-2
Jacquemoud, S., & Ustin, S. L. (2001). Leaf optical properties: A state of the art. In Proceedings 8th International Symposium Physical Measurements & Signatures in Remote Sensing, 8–12 January 2001, CNES, Aussois (France), 223–232.
Jones, H. G., & Schofield, P. (2008). Thermal and other remote sensing of plant stress. General and Applied Plant Physiology, 34, 19–32.
Kobayashi, T., Kanda, E., Kitada, K., Ishiguro, K., & Torigoe, Y. (2001). Detection of rice panicle blast with multispectral radiometer and the potential of using airborne multispectral scanners. Phytopathology, 91, 316–323.
Kuckenberg, J., Tartachnyk, I., & Noga, G. (2009). Temporal and spatial changes of chlorophyll fluorescence as a basis for early and precise detection of leaf rust and powdery mildew infections in wheat leaves. Precision Agriculture, 10, 34–44.
Lenthe, J.-H. (2006). Erfassung befallsrelevanter Klimafaktoren in Weizenbeständen mit Hilfe digitaler Infrarot-Thermographie. Dissertation, University of Bonn.
Lenthe, J.-H., Oerke, E.-C., & Dehne, H.-W. (2007). Digital thermography for monitoring canopy health of wheat. Precision Agriculture, 8, 15–26.
Lindenthal, M. (2005). Visualisierung der Krankheitsentwicklung von Falschem Mehltau an Gurken durch Pseudoperonospora cubensis mittels Thermography. Dissertation, University of Bonn.
Lindenthal, M., Steiner, U., Dehne, H.-W., & Oerke, E.-C. (2005). Effect of downey mildew development on transpiration of cucumber leaves visualized by digital thermography. Phytopathology, 95, 233–240.
Mahlein, A.-K., Steiner, U., Dehne, H.-W., & Oerke, E.-C. (2010). Spectral signatures of sugar beet leaves for the detection and differentiation of diseases. Precision Agriculture, 11, 413–431.
Mewes, T., Fanke, J., & Menz, G. (2011). Spectral requirements on airborne hyperspectral remote sensing data for wheat disease detection. Precision Agriculture, doi: 10.1007/s111190-011-9222-9
Montes, J. M., Melchinger, A. E., & Reif, J. C. (2007). Novel troughput phenotyping platforms in plant genetic studies. Trends in Plant Science, 12, 433–436.
Moshou, D., Bravo, C., West, J., Wahlen, S., McCartney, A., & Ramon, H. (2004). Automatic detection of ‘yellow rust’ in wheat using reflectance measurements and neural networks. Computers and Electronics in Agriculture, 44, 173–188.
Naidu, R. A., Perry, E. M., Pierce, F. J., & Mekuria, T. (2009). The potential of spectral reflectance technique for the detection of grapevine leafroll-associated virus-3 in two red-berried wine grape cultivars. Computers and Electronic in Agriculture, 66, 38–45.
Nutter, F., van Rij, N., Eggenberger, S. K., & Holah, N. (2010). Spatial and temporal dynamics of plant pathogens. In E. C. Oerke, R. Gerhards, G. Menz, & R. A. Sikora (Eds.), Precision crop protection—the challenge and use of heterogeneity (pp. 27–50). Dordrecht, Netherlands: Springer.
Oerke, E.-C., & Steiner, U. (2010). Potential of digital thermography for disease control. In E. C. Oerke, R. Gerhards, G. Menz, & R. A. Sikora (Eds.), Precision crop protection—the challenge and use of heterogeneity (pp. 167–182). Dordrecht, Netherlands: Springer.
Oerke, E.-C., Fröhling, P., & Steiner, U. (2011). Thermographic assessment of scab disease on apple leaves. Precision Agriculture, doi: 10.1007/s11119-010-9212-3
Oerke, E.-C., Steiner, U., Dehne, H.-W., & Lindenthal, M. (2006). Thermal imaging of cucumber leaves affected by downy mildew and environmental conditions. Journal of Experimental Botany, 57, 2121–2132.
Oerke, E.-C., & Dehne, H.-W. (2004). Safeguarding production—losses in major crops and the role of crop protection. Crop Protection, 23, 275–285.
Oppelt, N., & Mauser, W. (2004). Hyperspectral monitoring of physiological parameters of wheat during a vegetation period using AVIS data. International Journal of Remote Sensing, 25, 145–159.
Peñuelas, J., & Filella, I. (1998). Visible and near-infrared reflectance techniques for diagnosing plant physiological status. Trends in Plant Science, 3, 151–156.
Pietrzykowski, E., Stone, C., Pinkard, E., & Mohammed, C. (2006). Effects of Mycosphaerella leaf disease on the spectral reflectance properties of juvenile Eucalyptus globules foliage. Forrest Pathology, 36, 334–348.
Plaza, A., Benediktsson, J. A., Boardman, J. W., Brazile, J., Bruzzone, L., Camps-Valls, G., et al. (2009). Recent advances in techniques for hyperspectral image processing. Remote Sensing of Environment, 113, 110–122.
Quin, J., Burks, T. F., Ritenour, M. A., & Bonn, W. G. (2009). Detection of citrus canker using hyperspectral reflectance imaging with spectral information divergence. Journal of Food Engineering, 93, 183–191.
Rascher, U., Liebig, M., & Lüttge, U. (2000). Evaluation of instant light-response curves of chlorophyll fluorescence fluorometer on site in the field. Plant, Cell and Environment, 23, 1397–1405.
Reichardt, M., Jürgens, C., Klöble, U., Hüter, J., & Moser, K. (2009). Dissemination of precision farming in Germany: acceptance, adoption, obstacles, knowledge transfer and training activities. Precision Agriculture, 10, 525–545.
Rumpf, T., Mahlein, A. K., Steiner, U., Oerke, E. C., Dehne, H. W., & Plümer, L. (2010). Early detection and classification of plant diseases with Support Vector Machines based on hyperspectral reflectance. Computers and Electronics in Agriculture, 74, 91–99.
Schellberg, J., Hill, M. J., Gerhards, R., Rothmund, M., & Braun, M. (2009). Precision agriculture on grassland: applications, perspectives and constraints. European Journal of Agronomy, 29, 59–71.
Schmitz, A., Kiewnick, S., Schlang, J., & Sikora, R. A. (2004). Use of high resolutional digital thermography to detect Heterodera schachtii infestation in sugar beets. Communications in Agriculture and Applied Biological Sciences, 69, 359–363.
Scholes, J. D., & Rolfe, S. A. (2009). Chlorophyll fluorescence imaging as tool for understanding the impact of fungal diseases on plant performance: a phenomics perspective. Functional Plant Biology, 36, 880–892.
Scotford, I. M., & Miller, P. C. H. (2005). Applications of spectral reflectance techniques in northern European cereal production: a review. Biosystems Engineering, 90, 235–250.
Stafford, J. V. (2000). Implementing precision agriculture in the 21st Century. Journal of Agricultural Engineering Research, 76, 267–275.
Steddom, K., Bredehoeft, M. W., Khan, M., & Rush, C. M. (2005). Comparison of visual and multispectral radiometric disease evaluations of Cercospora leaf spot of sugar beet. Plant Disease, 89, 153–158.
Steiner, U., Bürling, K., & Oerke, E.-C. (2008). Sensorik für einen präzisierten Pflanzenschutz. Gesunde Pflanzen, 60, 131–141.
Stenzel, I., Steiner, U., Dehne, H.-W., & Oerke, E.-C. (2007). Occurrence of fungal leaf pathogens in sugar beet fields monitored with digital infrared thermography. In Stafford J. V. (Ed.), Precision agriculture’07. Papers presented at the 6th European Conference on Precision Agriculture. Wageningen Academic Publishers, pp 529–535.
Stoll, M., Schultz, H. R., Baecker, G., & Berkelmann-Loehnertz, B. (2008). Early pathogen detection under different water status and the assessment of spray application in vineyards through the use of thermal imagery. Precision Agriculture, 9, 407–417.
Thenkabail, P. S., Smith, R. B., & De Pauw, E. (2000). Hyperspectral vegetation indices and their relationship with agricultural crop characteristics. Remote Sensing of Environment, 71, 158–182.
Thoren, D., & Schmidhalter, U. (2009). Nitrogen status and biomass determination of oilseed rape by laser-induced chlorophyll fluorescence. European Journal of Agronomy, 30, 238–242.
Ustin, S. L., Gitelson, A. A., Jaquemoud, S., Schaepman, M., Asner, G. P., Gamon, J. A., et al. (2009). Retrieval of foliar information about plant pigment systems from high resolution spectroscopy. Remote Sensing of Environment, 113, 67–77.
Vadivambal, R., & Jayas, D. S. (2011). Applications of thermal imaging in agriculture and food industry—a review. Food and Bioprocess Technology, 4, 186–199.
Von Witzke, H., Noleppa, S., & Schwarz, G. (2008). Global agricultural market trends and their impacts on European agriculture. Working Paper 84, Humboldt Universitity Berlin. http://www.agrar.hu-berlin.de/struktur/institute/wisola/publ/wp (Stand 28.6.2011).
Voss, K., Franke, J., Mewes, T., Menz, G., & Kühbauch, W. (2010). Remote sensing for precision crop protection—a matter of scale. In E. C. Oerke, R. Gerhards, G. Menz, & R. A. Sikora (Eds.), Precision crop protection—the challenge and use of heterogeneity (pp. 101–118). Dordrecht, Netherlands: Springer.
Waggoner, P. E., & Aylor, D. E. (2000). Epidemiology, a science of patterns. Annual Review of Phytopathology, 38, 1–24.
West, J. S., Bravo, C., Oberti, R., Lemaire, D., Moshou, D., & McCartney, H. A. (2003). The potential of optical canopy measurement for targeted control of field crop diseases. Annual Review of Phytopathology, 41, 593–614.
West, S. J., Bravo, C., Oberti, R., Moshou, D., Ramon, H., & McCartney, H. A. (2010). Detection of fungal diseases optically and pathogen inoculum by air sampling. In E. C. Oerke, R. Gerhards, G. Menz, & R. A. Sikora (Eds.), Precision crop protection—the challenge and use of heterogeneity (pp. 135–150). Dordrecht, Netherlands: Springer.