Body Conformation Scoring of Cattle, using Machine Learning
Tarr, Bence
Szabó, István
Tőzsér, János
2025-08-11T05:50:36Z
2025-08-11T05:50:36Z
2025
http://hdl.handle.net/20.500.14044/32102
Precision agriculture brings new artificial intelligence techniques closer to
everyday farming. Agriculture historical data is easily available, so using this data to teach
a machine-learning model, offers various opportunities to enhance farming efficiency. In our
study, we develop a machine learning model to estimate some linear traits of Limousin sires
(sore for muscularity, length of the rump, muscularity of breast and muscularity of the width
of rump), based on a phenotypic score, using artificial intelligence, in Hungary. Phenotypic
scores are usually given by the experts in field. Before scoring, many measurements are made
on the animals, which takes time and places a high stress on the cattle. A hands-on prediction
application can make the whole process faster, and more comparable, regardless of the
expert who created the scoring. We found that after collecting sufficient data from previous
observations it is possible to train specifically selected artificial intelligence (AI) algorithms
to predict linear traits in Limousin breeding bulls. Machine learning (ML) was used to
predict the score values for muscularity, length of the rump, muscularity of the breast and
muscularity of the width of the rump for this study. We found no similar experiments for the
usage of AI algorithms to predict these variables. The coefficient of determination (R 2) of the
algorithm, in this study, provided the following range values: (R 2=0.77 to 0.86).
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Body Conformation Scoring of Cattle, using Machine Learning