Applied Sciences (Apr 2022)

Development of an Automated Body Temperature Detection Platform for Face Recognition in Cattle with YOLO V3-Tiny Deep Learning and Infrared Thermal Imaging

  • Shih-Sian Guo,
  • Kuo-Hua Lee,
  • Liyun Chang,
  • Chin-Dar Tseng,
  • Sin-Jhe Sie,
  • Guang-Zhi Lin,
  • Jih-Yi Chen,
  • Yi-Hsin Yeh,
  • Yu-Jie Huang,
  • Tsair-Fwu Lee

DOI
https://doi.org/10.3390/app12084036
Journal volume & issue
Vol. 12, no. 8
p. 4036

Abstract

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This study developed an automated temperature measurement and monitoring platform for dairy cattle. The platform used the YOLO V3-tiny (you only look once, YOLO) deep learning algorithm to identify and classify dairy cattle images. The system included a total of three layers of YOLO V3-tiny identification: (1) dairy cow body; (2) individual number (identity, ID); (3) thermal image of eye socket identification. We recorded each cow’s individual number and body temperature data after the three layers of identification, and carried out long-term body temperature tracking. The average prediction score of the recognition rate was 96%, and the accuracy was 90.0%. The thermal image of eye socket recognition rate was >99%. The area under the receiver operating characteristic curves (AUC) index of the prediction model was 0.813 (0.717–0.910). This showed that the model had excellent predictive ability. This system provides a rapid and convenient temperature measurement solution for ranchers. The improvement in dairy cattle image recognition can be optimized by collecting more image data. In the future, this platform is expected to replace the traditional solution of intrusive radio-frequency identification for individual recognition.

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