4.7 Article

Image-based orchard insect automated identification and classification method

期刊

COMPUTERS AND ELECTRONICS IN AGRICULTURE
卷 89, 期 -, 页码 110-115

出版社

ELSEVIER SCI LTD
DOI: 10.1016/j.compag.2012.08.008

关键词

Insect classification; Image processing; Integrated pest management; Global feature; Local feature

资金

  1. Department of Entomology, Michigan State University
  2. USDA-ARS Post-harvest Lab, East Lansing, MI

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Insect identification and classification is time-consuming work requiring expert knowledge for integrated pest management in orchards. An image-based automated insect identification and classification method is described in the paper. The complete method includes three models. An invariant local feature model was built for insect identification and classification using affine invariant local features; a global feature model was built for insect identification and classification using 54 global features; and a hierarchical combination model was proposed based on local feature and global feature models to combine advantages of the two models and increase performance. The three models were applied and tested for insect classification on eight insect species from pest colonies and orchards. The hierarchical combination model yielded better performance over global and local models. Moreover, to study the pose change of insects on traps and the hypothesis that an optimal time to acquire and image after landing exists, advanced analysis on time-dependent pose change of insects on traps is included in this study. The experimental results on field insect image classification with field-based images for training achieved the classification rate of 86.6% when testing with the combination model. This demonstrates the image-based insect identification and classification method could be a potential way for automated insect classification in integrated pest management. (C) 2012 Elsevier B.V. All rights reserved.

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