Literature DB >> 25170577

Identification of species and geographical strains of Sitophilus oryzae and Sitophilus zeamais using the visible/near-infrared hyperspectral imaging technique.

Yang Cao1, Chaojie Zhang2, Quansheng Chen2, Yanyu Li1, Shuai Qi2, Lin Tian1, YongLin Ren3.   

Abstract

BACKGROUND: Identifying stored-product insects is essential for granary management. Automated, computer-based classification methods are rapidly developing in many areas. A hyperspectral imaging technique could potentially be developed to identify stored-product insect species and geographical strains. This study tested and adapted the technique using four geographical strains of each of two insect species, the rice weevil and maize weevil, to collect and analyse the resultant hyperspectral data.
RESULTS: Three characteristic images that corresponded to the dominant wavelengths, 505, 659 and 955 nm, were selected by multivariate image analysis. Each image was processed, and 22 morphological and textural features from regions of interest were extracted as the inputs for an identification model. We found the backpropagation neural network model to be the superior method for distinguishing between the insect species and geographical strains. The overall recognition rates of the classification model for insect species were 100 and 98.13% for the calibration and prediction sets respectively, while the rates of the model for geographical strains were 94.17 and 86.88% respectively.
CONCLUSION: This study has demonstrated that hyperspectral imaging, together with the appropriate recognition method, could provide a potential instrument for identifying insects and could become a useful tool for identification of Sitophilus oryzae and Sitophilus zeamais to aid in the management of stored-product insects.
© 2014 Society of Chemical Industry.

Entities:  

Keywords:  geographical strains; hyperspectral imaging; identification; maize weevil; rice weevil; stored-product insects

Mesh:

Year:  2014        PMID: 25170577     DOI: 10.1002/ps.3893

Source DB:  PubMed          Journal:  Pest Manag Sci        ISSN: 1526-498X            Impact factor:   4.845


  2 in total

1.  Using proximal remote sensing in non-invasive phenotyping of invertebrates.

Authors:  Xiaowei Li; Hongxing Xu; Ling Feng; Xiao Fu; Yalin Zhang; Christian Nansen
Journal:  PLoS One       Date:  2017-05-04       Impact factor: 3.240

2.  A method for real-time classification of insect vectors of mosaic and brown streak disease in cassava plants for future implementation within a low-cost, handheld, in-field multispectral imaging sensor.

Authors:  Joseph Fennell; Charles Veys; Jose Dingle; Joachim Nwezeobi; Sharon van Brunschot; John Colvin; Bruce Grieve
Journal:  Plant Methods       Date:  2018-09-20       Impact factor: 4.993

  2 in total

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