Identification of seedling cabbages and weeds using hyperspectral imaging
Abstract
Keywords: hyperspectral imaging, weed identification, cabbage, seedlings
DOI: 10.3965/j.ijabe.20150805.1492
Citation: Deng W, Huang Y B, Zhao C J, Wang X. Identification of seedling cabbages and weeds using hyperspectral imaging. Int J Agric & Biol Eng, 2015; 8(5): 65-72.
Keywords
Full Text:
PDFReferences
Towa J J, Guo X P. Effects of irrigation and weed-control methods on growth of weed and rice. Int J Agric & Biol Eng, 2014; 7(5): 22–33.
Sun H, Li M Z, Zhang Q. Detection system of smart sprayer: Status, challenges, and perspectives. Int J Agric & Biol Eng, 2012; 5(3): 1–15.
Wang J W, Tao G X, Liu Y J, Pan Z W, Zhang C F. Field experimental study on pullout forces of rice seedlings and barnyard grasses for mechanical weed control in paddy field. Int J Agric & Biol Eng, 2014; 7(6): 1–7.
Biller R H. Reduced input of herbicides by use of optoelectronic sensors. Journal of Agricultural Engineering Research, 1998; 71, 357–362.
Andújar D, Àngela Ribeiro, Fernàndez-Quintanilla C, Dorado J. Accuracy and Feasibility of Optoelectronic Sensors for Weed Mapping in Wide Row Crops. Sensors, 2011; 11, 2304–2318.
Andújar D, Weis M, Gerhards R. An Ultrasonic System for Weed Detection in Cereal Crops. Sensors, 2012; 12, 17343–17357.
Thorp K, Tian L. A Review on Remote Sensing of Weeds in Agriculture. Precision Agriculture, 2004; 5, 477–508.
Weis M, Sökefeld M. Precision Crop Protection - the Challenge and Use of Heterogeneity; Springer Verlag: Dordrecht/Heidelberg/London/New York, 2010; Vol. 1, chapter Detection and identification of weeds, pp. 119–134.
Christensen S, Søgaard H, Kudsk P, Nørremark M, Lund I, Nadimi E, Jørgensen R. Site-specific weed control technologies. Weed Research, 2009; 49, 233–241.
Burgos-Artizzu X P, Ribeiro A, Tellaeche A, Pajares G, Fernández-Quintanilla C. Improving weed pressure assessment using digital images from an experience-based reasoning approach. Computers and Electronics in Agriculture, 2009; 65, 176–185.
Piron A, van der Heijden F, Destain M F. Weed detection in 3D images. Precision Agriculture, 2011; 12, 607–622.
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.
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.
Karimi Y, Prasher S O, Patel R M, Kim S H. Application of support vector machine technology for weed and nitrogen stress detection in corn. Computers and Electronics in Agriculture, 2006; 51(1): 99–109.
Alchanatis V, Leonid R, Amots H, Leonid Y. Weed detection in multi-spectral images of cotton fields. Computers and Electronics in Agriculture, 2005; 47(3): 243–260.
Borregaard T, Nielsen H, Nørgaard L, Have H. Crop–weed discrimination by line imaging spectroscopy. Journal of Agricultural Engineering Research, 2000; 75(4): 389–400.
Feyaerts F, Van Gool L. Multi-spectral vision system for weed detection. Pattern Recognition Letters, 2001; 22(6): 667–674.
Zhu D, Shao Y, Pan J, He Y. Identification of crop and weed in seedling stage based on multi-spectral images. Journal of Zhejiang University (Agriculture and Life Sciences), 2008; 34(4): 418–422.
Cao L, Wu C, Hou Q, Zhang W. Survey of target recognition technology based on spectrum imaging. Optical Technique, 2010; (001): 145–150.
Xie J, Pan T, Chen J, Chen H, Ren X. Joint optimization of Savitzky-Golay smoothing models and partial least squares factors for near-infrared spectroscopic analysis of serum glucose. Chinese Journal of Analytical Chemistry, 2010; 38(3): 342–346.
Li H, Gu H, Zhang B, Gao L. Research on hyperspectral remote sensing image classification based on MNF and SVM. Remote Sensing Information, 2007; 5: 12–15.
Copyright (c)