Detection system of smart sprayers: Status, challenges, and perspectives
Abstract
Keywords: smart sprayer, target detection, weed control, disease detection, chemical application
DOI: 10.3965/j.ijabe.20120503.002
Citation: Sun H, Li M Z, Zhang Q. Detection system of smart sprayer: Status, challenges, and perspectives. Int J Agric & Biol Eng, 2012; 5(3): 10
Keywords
References
Sankaran S, Mishra A, Ehsani R, Davis C. A review of advanced techniques for detecting plant diseases. Computers and Electronics in Agriculture, 2010; 72(1): 1-13.
Shrefler J W, Stall W M, Dusky J A. Spiny amaranth (Amaranthus spinosus L.), a serious competitor to crisphead lettuce (Lactuca sativa L.). HortScience, 1996; 31(3): 347-348.
Martelli G P. Major graft-transmissible diseases of grapevines: nature, diagnosis and sanitation. In: Proceedings of the 50th Annu Am Soc Enol Viticulture Meeting, WA, USA, 2000; pp. 231-236.
Yang Z, Rao M N, Elliott N C, Kindler S D, Popham T W. Differentiating stress induced by greenbugs and Russian wheat aphids in wheat using remote sensing. Computers and Electronics in Agriculture, 2009; 67(1–2): 64-70.
Grisso R D, Dickey E C, Schulze L D. The cost of misapplication of herbicides. Applied Engineering in Agriculture, 1989; 5(3): 344-347.
Pimentel D, Acquay H, Biltonen M, Rice P, Silva M, Nelson J, et al. Environmental and economic costs of pesticide use. BioScience, 1992; 42(10): 750-760.
Pimentel D, Andow D, Dyson-Hudson R, Gallahan D, Jacobson S, Irish M, et al. Environmental and social costs of pesticides: A preliminary assessment. Oikos, 1980; 126-140.
Al-Saleh I A. Pesticides: A review article. Journal of Environmental Pathology, Toxicology and Oncology, 1994; 13(3): 151-161.
Shutske J M, Jenkins S M. The impact of biotechnology on agricultural worker safety and health. Journal of Agricultural Safety and Health, 2002; 8(3): 277-287.
Gil Y, Sinfort C. Emission of pesticides to the air during sprayer application: A bibliographic review. Atmospheric Environment, 2005; 39(28): 5183-5193.
Pimentel D, McLaughlin L, Zepp A, Lakitan B, Kraus T, Kleinman P, et al. Environmental and economic effects of reducing pesticide use. BioScience, 1991; 41(6): 402-409.
Leach A W, Mumford J D. Pesticide environmental accounting: A method for assessing the external costs of individual pesticide applications. Environmental Pollution, 2008; 151(1): 139-147.
Law E. Agricultural electrostatic spray application: A review of significant research and development during the 20th century. Journal of Electrostatices, 2001; 51: 25-42.
Netland J, Balvoll G, Holmøy R. Band spraying, selective flame weeding and hoeing in late white cabbage PART II. In: Symposium on engineering as a tool to reduce pesticide consumption and operator hazards in Horticulture 372, 1993; 235-244.
Wijnands F G. Integrated crop protection and environment exposure to pesticides: methods to reduce use and impact of pesticides in arable farming. Developments in Crop Science, 1997; 25: 319-328.
Niazmand A R, Shaker M, Zakerin A R. Evaluation of different herbicide application methods and cultivation effect on yield and weed control of corn (Zea mays). Journal of Agronomy, 2008; 7(4): 314-320.
Brown D L, Giles D K, Oliver M N, Klassen P. Targeted spray technology to reduce pesticide in runoff from dormant orchards. Crop Protection, 2008; 27(3-5): 545-552.
Slaughter D C, Giles D K, Downey D. Autonomous robotic weed control systems: A review. Computers and Electronics
in Agriculture, 2008; 61(1): 63-78.
Franz E, Gebhardt M R, Unklesbay K B. The use of local spectral properties of leaves as an aid for identifying weed seedlings in digital images. Transactions of the ASABE, 1991; 34(2): 0682-0687.
Sims D A, Gamon J A. Relationships between leaf pigment content and spectral reflectance across a wide range of species, leaf structures and developmental stages. Remote Sensing of Environment, 2002; 81(2-3): 337-354.
Gitelson A A, Gritz Y, Merzlyak M. Relationships between leaf chlorophyll content and spectral reflectance and algorithms for non-destructive chlorophyll assessment in higher plant leaves. Journal of Plant Physiology, 2003; 160(3): 271-282.
Pérez A J, Lopez F, Benlloch J V, Christensen S. Colour and shape analysis techniques for weed detection in cereal fields. Computers and Electronics in Agriculture, 2000; 25(3): 197-212.
Onyango C M, Marchant J A. Segmentation of row crop plants from weeds using colour and morphology. Computers and Electronics in Agriculture, 2003; 39(3): 141-155.
Onyango C, Marchant J, Grundy A, Phelps K, Reader R. Image processing performance assessment using crop weed competition models. Precision Agriculture, 2005; 6(2): 183-192.
Ahmed I, Adnan A, Islam M, Gul Salim. Edge based real-time weed recognition system for selective herbicides. In Proceedings of the International MultiConference of Engineers and Computer Scientists. Hong Kong, 2008; pp. 19-21.
Burks T F, Shearer S A, Gates R S, Donohue K D. Backpropagation neural network design and evaluation for classifying weed species using color image texture. Transactions of the ASABE, 2000; 43(4): 1029-1037.
Piron A, Leemans V, Kleynen O, Lebeau F, Destain M F. Selection of the most efficient wavelength bands for discriminating weeds from crop. Computers and Electronics in Agriculture, 2008; 62(2): 141-148.
Moshou D, Bravo C, West J, Wahlena S, McCartney A, Ramona H. Automatic detection of "yellow rust" in wheat using reflectance measurements and neural networks. Computers and Electronics in Agriculture, 2004; 44(3): 173-188.
Moshou D, Bravo C, Oberti R, West J, Bodria L, McCartney A, et al. Plant disease detection based on data fusion of hyper-spectral and multi-spectral fluorescence imaging using Kohonen maps. Real-time Imaging, 2005; 11(2): 75-83.
Sankaran S, Ehsani R, Etxeberria E. Mid-infrared spectroscopy for detection of huanglongbing (greening) in citrus leaves. Talanta, 2010, 83: 574-581.
Matthews G A. Elestrostatic spraying of pesticides: A review. Crop Protection, 1989; 8(1): 3-15.
Giles D K, Akesson N B, Yates W E. Pesticide application technology: research and development and the growth of the industry. Transactions of the ASABE, 2008; 51(2): 397–403.
Giles D, Blewett T. Effects of conventional and reduced-volume, charged-spray application techniques on dislodgeable foliar residue of captan on strawberries. Journal of Agricultural and Food Chemistry, 1991; 39(9): 1646-1651.
Law S E, Giles D K. Electrostatic abatement of airborne respirable dust emission from mechanized tree-nut harvesting: Theoretical basis. Journal of Electrostatics, 2009; 67(2-3): 84-88.
Holownicki R, Doruchowski G, Godyn A, Swiechowski W. PA--Precision agriculture: Variation of spray deposit and loss with air-jet directions applied in Orchards. Journal of Agricultural Engineering Research, 2000; 77(2): 129-136.
Jamar L, Mostade O, Huyghebaert B, Pigeon O, Lateur M. Comparative performance of recycling tunnel and conventional sprayers using standard and drift-mitigating nozzles in dwarf apple orchards. Crop Protection, 2010; 29(6): 561-566.
Morrison R, Brown A L, Carrick R, Connor R, Dearle A. On the integration of object-oriented and process-oriented computation in persistent environments. Lecture Notes in Computer Science, 1988; 334: 334-339.
Al-Gaadi K A, Ayers P D. Integrating GIS and GPS in to a spatially variable rate herbicide application system. American Society of Agricultural and Biological Engineers, 1999; 15(4): 255-262.
Smith L, Thomson S. United States department of agriculture-agricultural research service research in application technology for pest management. Pest. Manag. Sci., 2003, 59(6-7): 699-707.
GopalaPillai S, Tian L, Zheng J. Evaluation of a flow control system for site-specific herbicide applications. Transactions of the ASABE, 1999; 42(4): 863-870.
Pierce R, Ayers P D. Evaluation of deposition and application accuracy of a pulse width modulation variable rate field sprayer. 2001.
Bui Q. VariTarget: A new nozzle with variable flow rate and droplet optimization. In: ASAE Annual Meeting. 2005.
Stafford J V. Implementing precision agriculture in the 21st Century. Journal of Agricultural Engineering Research, 2000; 76(3): 267-275.
Chen Y R, Chao K, Kim M S. Machine vision technology for agricultural applications. Computers and Electronics in Agriculture, 2002; 36(2-3): 173-191.
Thorp K, Tian L. A review on remote sensing of weeds in agriculture. Precision Agriculture, 2004; 5(5): 477-508.
Diao Z, Zhao C, Wu G, Qiao X. Review of application of mathematical morphology in crop disease recognition. Computer and Computing Technologies in Agriculture II, 2009; 2: 981-990.
Jones G, Gée C, Truchetet F. Modelling agronomic images for weed detection and comparison of crop/weed discrimination algorithm performance. Precision Agriculture, 2009; 10(1): 1-15.
Mao W, Hu X, Zhang X. Weed detection based on the optimized segmentation line of crop and weed. Computer and Computing Technologies in Agriculture, Volume II IFIP Advances in Information and Communication Technology, 2008; 259: 959-967.
Mishra A, Matouš K, Mishra K B, Nedbal L. Towards discrimination of plant species by machine vision: advanced statistical analysis of chlorophyll fluorescence transients. Journal of fluorescence, 2009; 19(5): 905-913.
Siddiqi M H, Ahmad W, Ahmad I. Weed classification using erosion and watershed segmentation algorithm. Innovations and Advanced Techniques in Systems, Computing Sciences and Software Engineering, 2008; 366-369.
Siddiqi M H, Ahmad I, Sulaiman S B. Weed recognition based on erosion and dilation segmentation algorithm. In: Education Technology and Computer. ICETC’09 International Conference, 2009; pp. 224-228.
Tellaeche A, Burgos-Artizzu X P, Pajares G, Ribeiro A. A vision-based method for weeds identification through the Bayesian decision theory. Pattern Recognition, 2008; 41(2): 521-530.
Ghazali K H, Mustafa M M, Hussain A. Machine vision system for automatic weeding strategy using image processing technique. American-Eurasian J. Agric. & Environ, 2008; 3(3): 451-458.
Tian L, Reid J F, Hummel J W. Development of a precision sprayer for site-specific weed management. Transactions of the ASABE, 1999; 42(4): 893-900.
Tian L. Development of a sensor-based precision herbicide application system. Computers and Electronics in Agriculture, 2002; 36(2-3): 133-149.
Camargo A, Smith J S. Image pattern classification for the identification of disease causing agents in plants. Computers and Electronics in Agriculture, 2009; 66(2): 121-125.
Cui D, Zhang Q, Li M, Hartman G L, Zhao Y F. Image processing methods for quantitatively detecting soybean rust from multispectral images. Biosystems Engineering, 2010; 107(3): 186-193.
Zwiggelaar R. A review of spectral properties of plants and their potential use for crop/weed discrimination in row-crops. Crop Protection, 1998; 17(3): 189-206.
Scotford I M, Miller P C H. Applications of spectral
reflectance techniques in Northern European cereal production: a review. Biosystems Engineering, 2005; 90(3): 235-250.
Naidu R A, Perry E M, Pierce F J, Mekuria T. The potential of spectral reflectance technique for the detection of Grapevine leafroll-associated virus-3 in two red-berried wine grape cultivars. Computers and Electronics in Agriculture, 2009; 66(1): 38-45.
Xu H R, Ying Y B, Fu X P, Zhu S P. Near-infrared spectroscopy in detecting leaf miner damage on tomato leaf. Biosystems Engineering, 2007; 96(4): 447-454.
Jones C, Jones J, Lee W. Diagnosis of bacterial spot of tomato using spectral signatures. Computers and Electronics in Agriculture, 2010; 74(2): 329-335.
Rumpf T, Mahlein A K, Steiner U, Oerke E C, Dehne H W, Plumer L. Early detection and classification of plant diseases with Support Vector Machines based on hyperspectral reflectance. Computers and Electronics in Agriculture, 2010; 74(1): 91-99.
Vrindts E, De Baerdemaeker J, Ramon H. Weed detection using canopy reflection. Precision Agriculture, 2002; 3(1): 63-80.
Sui R, Thomasson J A, Hanks J, Wooten J. Ground-based sensing system for weed mapping in cotton. Computers and Electronics in Agriculture, 2008; 60(1): 31-38.
Wang N, Zhang N, Dowell P, Dowell F. Design of an optical weed sensor using plant spectral characteristics. Transactions of the ASABE, 2001; 44(2): 409.
Okamoto H, Murata T, Kataoka T, Hata S I. Plant classification for weed detection using hyperspectral imaging with wavelet analysis. Weed Biol Manage, 2007; 7(1): 31-37.
Cui D, Zhang Q, Li M, Zhao Y, Hartman G L. Detection of soybean rust using a multispectral image sensor. Sensing and Instrumentation for Food Quality and Safety, 2009; 3(1): 49-56.
Slaughter D C, Giles D K, Fennimore S A, Smith R F. Multispectral machine vision identification of lettuce and weed seedlings for automated weed control. Weed Technology, 2008; 22: 378-384.
Staab E S, Slaughter D C, Zhang Y, Giles D K. Hyperspectral imaging system for precision weed control in processing tomato. In: ASAE Annual Meeting. 2009. Paper Number: 096635.
Piron A, Leemans V, Lebeau F, Destain M F. Improving in-row weed detection in multispectral stereoscopic images. Computers and Electronics in Agriculture, 2009; 69(1): 73-79.
Bravo C, Moshou D, West J, McCartney A, Ramon H. Early disease detection in wheat fields using spectral reflectance. Biosystems Engineering, 2003; 84(2): 137-145.
Franke J, Menz G. Multi-temporal wheat disease detection by multi-spectral remote sensing. Precision Agric., 2007; 8(3): 161-172.
Muhammed H H. Hyperspectral crop reflectance data for characterising and estimating fungal disease severity in wheat. Biosystems Engineering, 2005; 91(1): 9-20.
Grisham M P, Johnson R M, Zimba P V. Detecting sugarcane yellow leaf virus infection in asymptomatic leaves with hyperspectral remote sensing and associated leaf pigment changes. Journal of Virological Methods, 2010; 167(2): 140-145.
Qin Z, Zhang M. Detection of rice sheath blight for in-season disease management using multispectral remote sensing. International Journal of Applied Earth Observation and Geoinformation, 2005; 7(2): 115-128.
Huang W, Lamb D W, Niu Z, Zhang Y J, Wang J H. Identification of yellow rust in wheat using in-situ spectral reflectance measurements and airborne hyperspectral imaging. Precision Agric., 2007; 8(4-5): 187-197.
Du Q, Chang N B, Yang C, Srilakshmi K R. Combination of multispectral remote sensing, variable rate technology and environmental modeling for citrus pest management. Journal of Environmental Management, 2008; 86(1): 14-26.
Luedeling E, Hale A, Zhang M, Bentley W J, Cecil Dhamasri L. Remote sensing of spider mite damage in California peach orchards. International Journal of Applied Earth Observation and Geoinformation, 2009; 11(4): 244–255.
Chaerle L, Van Der Straeten D. Seeing is believing: Imaging techniques to monitor plant health. Biochimica et Biophysica Acta (BBA)-Gene Structure and Expression, 2001; 1519(3): 153-166.
Lenthe J H, Oerke E C, Dehne H W. Digital infrared
thermography for monitoring canopy health of wheat. Precision Agriculture, 2007; 8(1): 15-26.
Nicolas H. Using remote sensing to determine of the date of a fungicide application on winter wheat. Crop Protection, 2004; 23(9): 853-863.
Menesatti P, Biocca M, D’Andrea S, Pincu M. Thermography to analyze distribution of agricultural sprayers. Quantitative Infrared Thermography Journal, 2008; 5: 81-96.
Chueca P, Garcera C, Molto E, Gutierrez A. Development of a sensor-controlled sprayer for applying low-volume bait treatments. Crop Protection, 2008; 27(10): 1373-1379.
Zaman Q, Schumann A W. Performance of an ultrasonic tree volume measurement system in commercial citrus groves. Precision Agriculture, 2005; 6(5): 467-480.
Zaman Q U, Schumann A W, Hostler H K. Quantifying sources of error in Ultrasonic measurements of citrus orchards. Transactions of the ASABE, 2007; 23(4): 449-453.
Schumann A W, Zaman Q U. Software development for real-time ultrasonic mapping of tree canopy size. Computers and Electronics in Agriculture, 2005; 47(1): 25-40.
Haff R P, Slaughter D C. X-ray based stem detection in an automatic tomato weeding system. In: ASAE Annual Meeting. 2009. Paper Number: 096050.
Wei J, Salyani M. Development of a laser scanner for measuring tree canopy characteristics: Phase 2. Foliage density measurement. Transactions of the ASABE, 2005; 48(4): 1595-1601.
Raymond S G, Hilton P J, Gabric R P. Intelligent crop spraying: a prototype development. In Proceedings: 1st International Conference in Sensing Technology–2005 Nov., 2005; 21-23.
Copyright (c)