Animals (May 2023)

Study on the Influence of PCA Pre-Treatment on Pig Face Identification with Random Forest

  • Hongwen Yan,
  • Songrui Cai,
  • Erhao Li,
  • Jianyu Liu,
  • Zhiwei Hu,
  • Qiangsheng Li,
  • Huiting Wang

DOI
https://doi.org/10.3390/ani13091555
Journal volume & issue
Vol. 13, no. 9
p. 1555

Abstract

Read online

To explore the application of a traditional machine learning model in the intelligent management of pigs, in this paper, the influence of PCA pre-treatment on pig face identification with RF is studied. By this testing method, the parameters of two testing schemes, one adopting RF alone and the other adopting RF + PCA, were determined to be 65 and 70, respectively. With individual identification tests carried out on 10 pigs, accuracy, recall, and f1-score were increased by 2.66, 2.76, and 2.81 percentage points, respectively. Except for the slight increase in training time, the test time was reduced to 75% of the old scheme, and the efficiency of the optimized scheme was greatly improved. It indicates that PCA pre-treatment positively improved the efficiency of individual pig identification with RF. Furthermore, it provides experimental support for the mobile terminals and the embedded application of RF classifiers.

Keywords