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Identification of double-yolked duck egg using computer vision

Author

Listed:
  • Long Ma
  • Ke Sun
  • Kang Tu
  • Leiqing Pan
  • Wei Zhang

Abstract

The double-yolked (DY) egg is quite popular in some Asian countries because it is considered as a sign of good luck, however, the double yolk is one of the reasons why these eggs fail to hatch. The usage of automatic methods for identifying DY eggs can increase the efficiency in the poultry industry by decreasing egg loss during incubation or improving sale proceeds. In this study, two methods for DY duck egg identification were developed by using computer vision technology. Transmittance images of DY and single-yolked (SY) duck eggs were acquired by a CCD camera to identify them according to their shape features. The Fisher’s linear discriminant (FLD) model equipped with a set of normalized Fourier descriptors (NFDs) extracted from the acquired images and the convolutional neural network (CNN) model using primary preprocessed images were built to recognize duck egg yolk types. The classification accuracies of the FLD model for SY and DY eggs were 100% and 93.2% respectively, while the classification accuracies of the CNN model for SY and DY eggs were 98% and 98.8% respectively. The CNN-based algorithm took about 0.12 s to recognize one sample image, which was slightly faster than the FLD-based (about 0.20 s). Finally, this work compared two classification methods and provided the better method for DY egg identification.

Suggested Citation

  • Long Ma & Ke Sun & Kang Tu & Leiqing Pan & Wei Zhang, 2017. "Identification of double-yolked duck egg using computer vision," PLOS ONE, Public Library of Science, vol. 12(12), pages 1-15, December.
  • Handle: RePEc:plo:pone00:0190054
    DOI: 10.1371/journal.pone.0190054
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