Evaluating transfer learning strategies for improving dairy cattle body weight prediction in small farms using depth-image and point-cloud data
Jin Wang, Angelo De Castro, Yuxi Zhang, Lucas Basolli Borsatto, Yuechen Guo, Victoria Bastos Primo, Ana Beatriz Montevecchio Bernardino, Gota Morota, Ricardo C Chebel, Haipeng Yu

TL;DR
This study evaluates transfer learning strategies for dairy cattle body weight prediction using depth images and point-cloud data, demonstrating significant improvements on small farms and comparing the effectiveness of different data modalities.
Contribution
It provides a comprehensive comparison of transfer learning effectiveness and data modalities for cattle weight prediction, highlighting the benefits for small farms with limited data.
Findings
Transfer learning significantly improves prediction accuracy on small farms.
No consistent performance difference between depth images and point-cloud data.
Pretrained models generalize well across different farm conditions.
Abstract
Computer vision provides automated, non-invasive, and scalable tools for monitoring dairy cattle, thereby supporting management, health assessment, and phenotypic data collection. Although transfer learning is commonly used for predicting body weight from images, its effectiveness and optimal fine-tuning strategies remain poorly understood in livestock applications, particularly beyond the use of pretrained ImageNet or COCO weights. In addition, while both depth images and three-dimensional point-cloud data have been explored for body weight prediction, direct comparisons of these two modalities in dairy cattle are limited. Therefore, the objectives of this study were to 1) evaluate whether transfer learning from a large farm enhances body weight prediction on a small farm with limited data, and 2) compare the predictive performance of depth-image- and point-cloud-based approaches under…
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Taxonomy
TopicsAnimal Behavior and Welfare Studies · Effects of Environmental Stressors on Livestock · Genetic and phenotypic traits in livestock
