Agriculture (Feb 2024)

Computer Vision-Based Measurement Techniques for Livestock Body Dimension and Weight: A Review

  • Weihong Ma,
  • Xiangyu Qi,
  • Yi Sun,
  • Ronghua Gao,
  • Luyu Ding,
  • Rong Wang,
  • Cheng Peng,
  • Jun Zhang,
  • Jianwei Wu,
  • Zhankang Xu,
  • Mingyu Li,
  • Hongyan Zhao,
  • Shudong Huang,
  • Qifeng Li

DOI
https://doi.org/10.3390/agriculture14020306
Journal volume & issue
Vol. 14, no. 2
p. 306

Abstract

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Acquiring phenotypic data from livestock constitutes a crucial yet cumbersome phase in the breeding process. Traditionally, obtaining livestock phenotypic data primarily involves manual, on-body measurement methods. This approach not only requires extensive labor but also induces stress on animals, which leads to potential economic losses. Presently, the integration of next-generation Artificial Intelligence (AI), visual processing, intelligent sensing, multimodal fusion processing, and robotic technology is increasingly prevalent in livestock farming. The advantages of these technologies lie in their rapidity and efficiency, coupled with their capability to acquire livestock data in a non-contact manner. Based on this, we provide a comprehensive summary and analysis of the primary advanced technologies employed in the non-contact acquisition of livestock phenotypic data. This review focuses on visual and AI-related techniques, including 3D reconstruction technology, body dimension acquisition techniques, and live animal weight estimation. We introduce the development of livestock 3D reconstruction technology and compare the methods of obtaining 3D point cloud data of livestock through RGB cameras, laser scanning, and 3D cameras. Subsequently, we explore body size calculation methods and compare the advantages and disadvantages of RGB image calculation methods and 3D point cloud body size calculation methods. Furthermore, we also compare and analyze weight estimation methods of linear regression and neural networks. Finally, we discuss the challenges and future trends of non-contact livestock phenotypic data acquisition. Through emerging technologies like next-generation AI and computer vision, the acquisition, analysis, and management of livestock phenotypic data are poised for rapid advancement.

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