Research@Lincoln
    • Login
     
    View Item 
    •   Research@Lincoln Home
    • Metadata-only (no full-text)
    • Metadata-only (no full-text)
    • View Item
    •   Research@Lincoln Home
    • Metadata-only (no full-text)
    • Metadata-only (no full-text)
    • View Item
    JavaScript is disabled for your browser. Some features of this site may not work without it.

    Evaluation of support vector machine and artificial neural networks in weed detection using shape features

    Bakhshipour, A; Jafari, Abdolabbas
    Abstract
    Weed detection is still a challenging problem for robotic weed removal. Small tolerance between the cutting tine and main crop position requires highly precise discrimination of the weed against the main crop. Close similarities between the shape features of sugar beet and common weeds make it impossible to define an exclusive feature to be able to efficiently detect all the weeds with acceptable accuracy. Therefore in this study, it was tried to integrate several shape features to establish a pattern for each variety of the plants. To enable the vision system in the detection of the weeds based on their pattern, support vector machine and artificial neural networks were employed. Four species of common weeds in sugar beet fields were studied. Shape feature sets included Fourier descriptors and moment invariant features. Results showed that the overall classification accuracy of ANN was 92.92%, where 92.50% of weeds were correctly classified. Higher accuracies were obtained when the SVM was used as the classifier with an overall accuracy of 95.00% whereas 93.33% of weeds were correctly classified. Also, 93.33% and 96.67% of sugar beet plants were correctly classified by ANN and SVM respectively.... [Show full abstract]
    Keywords
    machine vision; image processing; pattern recognition; weeding robot; precision agriculture; plant phenotype; Beta vulgaris
    Fields of Research
    070308 Crop and Pasture Protection (Pests, Diseases and Weeds)
    Date
    2018-02
    Type
    Journal Article
    Collections
    • Metadata-only (no full-text) [4836]
    View/Open
    Share this

    on Twitter on Facebook on LinkedIn on Reddit on Tumblr by Email

    DOI
    https://doi.org/10.1016/j.compag.2017.12.032
    Metadata
     Expand record
    © 2017 Elsevier B.V. All rights reserved.
    This service is maintained by Learning, Teaching and Library
    • Archive Policy
    • Copyright and Reuse
    • Deposit Guidelines and FAQ
    • Contact Us
     

     

    Browse

    All of Research@LincolnCommunities & CollectionsTitlesAuthorsKeywordsBy Issue DateThis CollectionTitlesAuthorsKeywordsBy Issue Date

    My Account

    LoginRegister

    Statistics

    View Usage Statistics
    This service is maintained by Learning, Teaching and Library
    • Archive Policy
    • Copyright and Reuse
    • Deposit Guidelines and FAQ
    • Contact Us