Spectral discrimination of wild oat and canary grass in wheat fields for less herbicide application
暂无分享,去创建一个
M. Jurado-Expósito | F. López-Granados | L. Garcia-Torres | J. M. Peñá-Barragán | A. García-Ferrer | M. Gómez-Casero | I. L. Castillejo-González | I. Castillejo-González
[1] T. Williams. A STUDY OF THE COMPETITIVE ABILITY OF CHENOPODIUM ALBUM L. , 1964 .
[2] C. Jordan. Derivation of leaf-area index from quality of light on the forest floor , 1969 .
[3] J. A. Schell,et al. Monitoring vegetation systems in the great plains with ERTS , 1973 .
[4] P. J. Curran,et al. Aerial photography for the assessment of crop condition: a review , 1985 .
[5] J. Everitt,et al. Detecting Huisache (Acacia farnesiana) and Mexican Palo-verde (Parkinsonia aculeata) by Aerial Photography , 1987, Weed Science.
[6] J. Cuevas,et al. Grassy weeds in winter cereals in Southern Spain. , 1989 .
[7] R. Jackson,et al. Interpreting vegetation indices , 1991 .
[8] P. Lancashire,et al. A uniform decimal code for growth stages of crops and weeds , 1991 .
[9] P. Brain,et al. Long‐term stability of distribution of Alopecurus myosuroides Huds. within cereal fields , 1991 .
[10] J. V. Stafford,et al. Potential for automatic weed detection and selective herbicide application , 1991 .
[11] P. J. Pinter,et al. Remote sensing for crop protection , 1993 .
[12] J. C. Price. How unique are spectral signatures , 1994 .
[13] Paul J. Curran,et al. The relationship between red edge and chlorophyll concentration in the Broadbalk winter wheat experiment at Rothamsted , 1994 .
[14] G. W. Cussans,et al. A technique for mapping the spatial distribution of Elymus repots, with estimates of the potential reduction in herbicide usage from patch spraying , 1996 .
[15] Lawrence W. Lass,et al. The Effect of Phenological Stage on Detectability of Yellow Hawkweed (Hieracium pratense) and Oxeye Daisy (Chrysanthemum leucanthemum) with Remote Multispectral Digital Imagery , 1997 .
[16] C. Brodley,et al. Decision tree classification of land cover from remotely sensed data , 1997 .
[17] John W. Salisbury,et al. Spectral Measurements Field Guide , 1998 .
[18] Reyer Zwiggelaar,et al. A review of spectral properties of plants and their potential use for crop/weed discrimination in row-crops , 1998 .
[19] Alan H. Strahler,et al. Maximizing land cover classification accuracies produced by decision trees at continental to global scales , 1999, IEEE Trans. Geosci. Remote. Sens..
[20] Rew,et al. Evaluating the accuracy of mapping weeds in seedling crops using airborne digital imaging: Avena spp. in seedling triticale , 1999 .
[21] Floyd E. Dowell,et al. SINGLEWHEAT KERNEL COLOR CLASSIFICATION USING NEURAL NETWORKS , 1999 .
[22] D. Lobell,et al. Quantifying vegetation change in semiarid environments: precision and accuracy of spectral mixture analysis and the normalized difference vegetation index. , 2000 .
[23] T. Borregaard,et al. Crop–weed Discrimination by Line Imaging Spectroscopy , 2000 .
[24] M. Cochrane. Using vegetation reflectance variability for species level classification of hyperspectral data , 2000 .
[25] Lisa J. Rew,et al. Spatial distribution of weeds in arable crops: are current sampling and analytical methods appropriate? , 2001 .
[26] Shunlin Liang,et al. Remote Sensing of Weed Canopies , 2002 .
[27] Chun-Chieh Yang,et al. Development of neural networks for weed recognition in corn fields , 2002 .
[28] T. F. Burks,et al. Influence of weed maturity levels on species classification using machine vision , 2002, Weed Science.
[29] WARWICK L. FELTON,et al. Using Reflectance Sensors in Agronomy and Weed Science1 , 2002, Weed Technology.
[30] Hannu E. Haapala. Discriminating Weeds from Processing Tomato Plants using Visible and Near Infrared Reflectance , 2003 .
[31] C. H. Koger,et al. Detecting Late-Season Weed Infestations in Soybean (Glycine max)1 , 2003, Weed Technology.
[32] P. M. Hansena,et al. Reflectance measurement of canopy biomass and nitrogen status in wheat crops using normalized difference vegetation indices and partial least squares regression , 2003 .
[33] A. Smith,et al. Weed–Crop Discrimination Using Remote Sensing: A Detached Leaf Experiment1 , 2003, Weed Technology.
[34] S. Prasher,et al. Classification of hyperspectral data by decision trees and artificial neural networks to identify weed stress and nitrogen status of corn , 2003 .
[35] A. Skidmore,et al. Spectral discrimination of vegetation types in a coastal wetland , 2003 .
[36] Francisca López-Granados,et al. Discrimination of weed seedlings, wheat (Triticum aestivum) stubble and sunflower (Helianthus annuus) by near-infrared reflectance spectroscopy (NIRS) , 2003 .
[37] D. K. Giles,et al. DISCRIMINATING WEEDS FROM PROCESSING TOMATO PLANTS USING VISIBLE AND NEAR-INFRARED SPECTROSCOPY , 2004 .
[38] Ismail Kavdir,et al. Discrimination of sunflower, weed and soil by artificial neural networks , 2004 .
[39] Jiyul Chang,et al. Detecting weed-free and weed-infested areas of a soybean field using near-infrared spectral data , 2004, Weed Science.
[40] M. Ashton,et al. Accuracy assessments of hyperspectral waveband performance for vegetation analysis applications , 2004 .
[41] César Fernández-Quintanilla,et al. Simulating the effects of weed spatial pattern and resolution of mapping and spraying on economics of site-specific management , 2004 .
[42] César Fernández-Quintanilla,et al. Spatial stability of Avena sterilis ssp. ludoviciana populations under annual applications of low rates of imazamethabenz , 2004 .
[43] M. Jurado-Expósito,et al. Spatial and temporal analysis of Convolvulus arvensis L. populations over four growing seasons , 2004 .
[44] L. Tian,et al. A Review on Remote Sensing of Weeds in Agriculture , 2004, Precision Agriculture.
[45] L. Bruce,et al. Detection of pitted morningglory (Ipomoea lacunosa) with hyperspectral remote sensing. II. Effects of vegetation ground cover and reflectance properties , 2004, Weed Science.
[46] Roland Gerhards,et al. The Economic Impact of Site-Specific Weed Control , 2003, Precision Agriculture.
[47] P. Dutilleul,et al. CLASSIFICATION ACCURACY OF DISCRIMINANT ANALYSIS, ARTIFICIAL NEURAL NETWORKS, AND DECISION TREES FOR WEED AND NITROGEN STRESS DETECTION IN CORN , 2005 .
[48] Francisca López-Granados,et al. Characterizing Population Growth Rate of Convolvulus arvensis in Wheat–Sunflower No-Tillage Systems , 2005 .
[49] Scott D. Noble,et al. Site-specific weed management: sensing requirements— what do we need to see? , 2005, Weed Science.
[50] Shiv O. Prasher,et al. DISCRIMINANT ANALYSIS OF HYPERSPECTRAL DATA FOR ASSESSING WATER AND NITROGEN STRESSES IN CORN , 2005 .
[51] Jagadeesh Mosali,et al. Identification of Optical Spectral Signatures for Detecting Cheat and Ryegrass in Winter Wheat , 2005 .
[52] Francisca López-Granados,et al. Spectral discrimination of Ridolfia segetum and sunflower as affected by phenological stage , 2006 .
[53] Using remote sensing for identification of late-season grass weed patches in wheat , 2006 .
[54] Fuan Tsai,et al. Texture augmented analysis of high resolution satellite imagery in detecting invasive plant species , 2006 .
[55] César Fernández-Quintanilla,et al. Assessing the opportunity for site‐specific management of Avena sterilis in winter barley fields in Spain , 2006 .
[56] J. M. Blanco-Moreno,et al. Spatial and temporal patterns of Lolium rigidum–Avena sterilis mixed populations in a cereal field , 2006 .
[57] Francisca López-Granados,et al. Mapping Ridolfia segetum patches in sunflower crop using remote sensing , 2007 .
[58] M. Jurado-Expósito,et al. Multispectral classification of grass weeds and wheat (Triticum durum) using linear and nonparametric functional discriminant analysis and neural networks , 2008 .