Ground-level hyperspectral imagery for detecting weeds in wheat fields

被引:66
作者
Herrmann, I. [1 ]
Shapira, U. [1 ]
Kinast, S. [2 ]
Karnieli, A. [1 ]
Bonfil, D. J. [3 ]
机构
[1] Ben Gurion Univ Negev, Jacob Blaustein Inst Desert Res, Remote Sensing Lab, IL-84990 Sede Boker Campus, Israel
[2] Ben Gurion Univ Negev, Jacob Blaustein Inst Desert Res, Dept Solar Energy & Environm Phys, IL-84990 Sede Boker Campus, Israel
[3] Agr Res Org, Field Crops & Nat Resources Dept, Gilat Res Ctr, IL-85280 Nege, Israel
关键词
Weed detection; Hyperspectral imaging; Site specific; Plant spectroscopy; Wheat; PARTIAL LEAST-SQUARES; VEN-MU-S; CHLOROPHYLL CONTENT; SUGAR-BEET; CLASSIFICATION; DISCRIMINATION; COEFFICIENT; ACCURACY; NITROGEN; PLANTS;
D O I
10.1007/s11119-013-9321-x
中图分类号
S [农业科学];
学科分类号
09 ;
摘要
Site-specific weed management can allow more efficient weed control from both an environmental and an economic perspective. Spectral differences between plant species may lead to the ability to separate wheat from weeds. The study used ground-level image spectroscopy data, with high spectral and spatial resolutions, for detecting annual grasses and broadleaf weeds in wheat fields. The image pixels were used to cross-validate partial least squares discriminant analysis classification models. The best model was chosen by comparing the cross-validation confusion matrices in terms of their variances and Cohen's Kappa values. This best model used four classes: broadleaf, grass weeds, soil and wheat and resulted in Kappa of 0.79 and total accuracy of 85 %. Each of the classes contains both sunlit and shaded data. The variable importance in projection method was applied in order to locate the most important spectral regions for each of the classes. It was found that the red-edge is the most important region for the vegetation classes. Ground truth pixels were randomly selected and their confusion matrix resulted in a Kappa of 0.63 and total accuracy of 72 %. The results obtained were reasonable although the model used wheat and weeds from different growth stages, acquisition dates and fields. It was concluded that high spectral and spatial resolutions can provide separation between wheat and weeds based on their spectral data. The results show feasibility for up-scaling the spectral methods to air or spaceborne sensors as well as developing ground-level application.
引用
收藏
页码:637 / 659
页数:23
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