Hyperspectral classification of Cyperus esculentus clones and morphologically similar weeds

Marlies Lauwers, Benny De Cauwer, David Nuyttens, Simon Cool, J Pieters

Onderzoeksoutput: Bijdrage aan tijdschriftA1: Web of Science-artikelpeer review

Uittreksel

Cyperus esculentus (yellow nutsedge) is one of the world’s worst weeds as it can cause great damage to crops and crop production. To eradicate C. esculentus, early detection is key—a challenging task as it is often confused with other Cyperaceae and displays wide genetic variability. In this study, the objective was to classify C. esculentus clones and morphologically similar weeds. Hyperspectral reflectance between 500 and 800 nm was tested as a measure to discriminate between (I) C. esculentus and morphologically similar Cyperaceae weeds, and between (II) different clonal populations of C. esculentus using three classification models: random forest (RF), regularized logistic regression (RLR) and partial least squares–discriminant analysis (PLS–DA). RLR performed better than RF and PLS–DA, and was able to adequately classify the samples. The possibility of creating an affordable multispectral sensing tool, for precise in-field recognition of C. esculentus plants based on fewer spectral bands, was tested. Results of this study were compared against simulated results from a commercially available multispectral camera with four spectral bands. The model created with customized bands performed almost equally well as the original PLS–DA or RLR model, and much better than the model describing multispectral image data from a commercially available camera. These results open up the opportunity to develop a dedicated robust tool for C. esculentus recognition based on four spectral bands and an appropriate classification model.
Oorspronkelijke taalEngels
Artikel nummer2504
TijdschriftSensors
Volume20
Exemplaarnummer9
ISSN1424-8220
DOI's
PublicatiestatusGepubliceerd - 28-apr-2020

Trefwoorden

  • Discriminant analysis
  • Logistic regression
  • Partial least squares
  • Random forest
  • Reflectance
  • Weed classification
  • Yellow nutsedge

Dit citeren