Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
6539564 | Computers and Electronics in Agriculture | 2018 | 9 Pages |
Abstract
Support Vector Machine (SVM) algorithms are developed for weed-crop discrimination and their accuracies are compared with a conventional data-aggregation method based on the evaluation of discrete Normalised Difference Vegetation Indices (NDVIs) at two different wavelengths. A testbed is especially built to collect the spectral reflectance properties of corn (as a crop) and silver beet (as a weed) at 635â¯nm, 685â¯nm, and 785â¯nm, at a speed of 7.2â¯km/h. Results show that the use of the Gaussian-kernel SVM method, in conjunction with either raw reflected intensities or NDVI values as inputs, provides better discrimination accuracy than that attained using the discrete NDVI-based aggregation algorithm. Experimental results carried out in laboratory conditions demonstrate that the developed Gaussian SVM algorithms can classify corn and silver beet with corn/silver-beet discrimination accuracies of 97%, whereas the maximum accuracy attained using the conventional NDVI-based method does not exceed 70%.
Related Topics
Physical Sciences and Engineering
Computer Science
Computer Science Applications
Authors
Saman Akbarzadeh, Arie Paap, Selam Ahderom, Beniamin Apopei, Kamal Alameh,