Journal of Animal Science and Technology
Korean Society of Animal Science and Technology
Article

Research trends in livestock facial identification – A review

Mun-Hye Kang1, Sang-Hyon Oh2,*
1Division of Aerospace and Software Engineering, Gyeongsang National University, Jinju Korea, Korea.
2Division of Animal Science, Gyeongsang National University, Jinju Korea, Korea.
*Corresponding Author: Sang-Hyon Oh, Division of Animal Science, Gyeongsang National University, Jinju Korea, Korea, Republic of. E-mail: shoh@gnu.ac.kr.

© Copyright 2025 Korean Society of Animal Science and Technology. This is an Open-Access article distributed under the terms of the Creative Commons Attribution Non-Commercial License (http://creativecommons.org/licenses/by-nc/4.0/) which permits unrestricted non-commercial use, distribution, and reproduction in any medium, provided the original work is properly cited.

Received: Nov 17, 2024; Revised: Dec 16, 2024; Accepted: Jan 02, 2025

Published Online: Jan 03, 2025

Abstract

This review examines and summarizes research related to video processing and convolutional neural network-based deep learning for animal face recognition, identification and re-identification, and assesses its applicability to precision livestock farming for improving animal welfare and production efficiency. To enhance efficiency in production and animal management, address concerns regarding animal welfare and health, and minimize environmental impact and resource usage, technologies for estimating growth, identifying individuals, and monitoring behavior are essential. As computer technology advances, livestock monitoring systems have also evolved. These systems are broadly categorized into sensor-based contact methods and video-based non-contact methods. Recently, the rapid advancement of computer technologies, including deep learning algorithms, has enabled the analysis of accumulated data to continuously monitor and analyze animal conditions without human intervention, resulting in efficient and automated monitoring systems. The integration of video processing and convolutional neural network-based deep learning for animal face recognition, identification, and re-identification holds significant promise for precision livestock farming. By leveraging these advanced technologies, it is possible to enhance production efficiency and animal management, address animal welfare and health concerns, and reduce environmental impact and resource usage. These systems represent a crucial step forward in the evolution of livestock management, offering precise and efficient tools for the estimation of growth, individual identification, and behavior monitoring, ultimately contributing to improved animal welfare and production outcomes.

Keywords: livestock; recognition; identification; re-identification; convolutional neural network; deep learning