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CT image segmentation of meat sheep Loin based on deep learning

Author

Listed:
  • Xiaoyao Cao
  • Yihang Lu
  • Luming Yang
  • Guangjie Zhu
  • Xinyue Hu
  • Xiaofang Lu
  • Jing Yin
  • Peng Guo
  • Qingfeng Zhang

Abstract

There are no clear boundaries between internal tissues in sheep Computerized Tomography images, and it is difficult for traditional methods to meet the requirements of image segmentation in application. Deep learning has shown excellent performance in image analysis. In this context, we investigated the Loin CT image segmentation of sheep based on deep learning models. The Fully Convolutional Neural Network (FCN) and 5 different UNet models were applied in image segmentation on the data set of 1471 CT images including the Loin part from 25 Australian White rams and Dolper rams using the method of 5-fold cross validation. After 10 independent runs, different evaluation metrics were applied to assess the performances of the models. All models showed excellent results in terms evaluation metrics. There were slight differences among the results from the six models, and Attention-UNet outperformed others methods with 0.998±0.009 in accuracy, 4.391±0.338 in AVER_HD, 0.90±0.012 in MIOU and 0.95±0.007 in DICE, respectively, while the optimal value of LOSS was 0.029±0.018 from Channel-UNet, and the running time of ResNet34-UNet is the shortest.

Suggested Citation

  • Xiaoyao Cao & Yihang Lu & Luming Yang & Guangjie Zhu & Xinyue Hu & Xiaofang Lu & Jing Yin & Peng Guo & Qingfeng Zhang, 2023. "CT image segmentation of meat sheep Loin based on deep learning," PLOS ONE, Public Library of Science, vol. 18(11), pages 1-16, November.
  • Handle: RePEc:plo:pone00:0293764
    DOI: 10.1371/journal.pone.0293764
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