Calculating Volume of Pig Point Cloud Based on Improved Poisson Reconstruction

Animals (Basel). 2024 Apr 17;14(8):1210. doi: 10.3390/ani14081210.

Abstract

Pig point cloud data can be used to digitally reconstruct surface features, calculate pig body volume and estimate pig body weight. Volume, as a pig novel phenotype feature, has the following functions: (a) It can be used to estimate livestock weight based on its high correlation with body weight. (b) The volume proportion of various body parts (such as head, legs, etc.) can be obtained through point cloud segmentation, and the new phenotype information can be utilized for breeding pigs with smaller head volumes and stouter legs. However, as the pig point cloud has an irregular shape and may be partially missing, it is difficult to form a closed loop surface for volume calculation. Considering the better water tightness of Poisson reconstruction, this article adopts an improved Poisson reconstruction algorithm to reconstruct pig body point clouds, making the reconstruction results smoother, more continuous, and more complete. In the present study, standard shape point clouds, a known-volume Stanford rabbit standard model, a measured volume piglet model, and 479 sets of pig point cloud data with known body weight were adopted to confirm the accuracy and reliability of the improved Poisson reconstruction and volume calculation algorithm. Among them, the relative error was 4% in the piglet model volume result. The average absolute error was 2.664 kg in the weight estimation obtained from pig volume by collecting pig point clouds, and the average relative error was 2.478%. Concurrently, it was determined that the correlation coefficient between pig body volume and pig body weight was 0.95.

Keywords: pig; point cloud reconstruction; volume calculation; weight estimation.

Grants and funding

This project has received sponsorship from the National Natural Science Foundation of China [32172780], Key Area R&D Plan of Guangdong Province [2019B020219001], National Engineering Research Center for Breeding Swine Industry, and the Key Laboratory of Guangzhou for Intelligent Agriculture [201902010081].