Journal of Hymenoptera Research (Feb 2023)

Trialling a convolution neural network for the identification of Braconidae in New Zealand

  • Darren Ward,
  • Brent Martin

DOI
https://doi.org/10.3897/jhr.95.95964
Journal volume & issue
Vol. 95
pp. 95 – 101

Abstract

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Computer vision approaches, such as deep learning, potentially offer a range of benefits to entomology, particularly for the image-based identification of taxa. An experiment was conducted to gauge the ability of a convolution neural network (CNN) to identify genera of Braconidae from images of forewings. A deep learning CNN was trained via transfer learning from a small set of 488 images for 57 genera. Three-fold cross-validation achieved an accuracy of 96.7%, thus demonstrating that identification to genus using forewings is highly predictive. Further work is needed to increase both the coverage to species level and the number of images available.