[2603.25535] Insights on back marking for the automated identification of animals

[2603.25535] Insights on back marking for the automated identification of animals

arXiv - Machine Learning 4 min read

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Abstract page for arXiv paper 2603.25535: Insights on back marking for the automated identification of animals

Computer Science > Computer Vision and Pattern Recognition arXiv:2603.25535 (cs) [Submitted on 26 Mar 2026] Title:Insights on back marking for the automated identification of animals Authors:David Brunner, Marie Bordes, Elisabeth Mayrhuber, Stephan M. Winkler, Viktoria Dorfer, Maciej Oczak View a PDF of the paper titled Insights on back marking for the automated identification of animals, by David Brunner and 5 other authors View PDF HTML (experimental) Abstract:To date, there is little research on how to design back marks to best support individual-level monitoring of uniform looking species like pigs. With the recent surge of machine learning-based monitoring solutions, there is a particular need for guidelines on the design of marks that can be effectively recognised by such algorithms. This study provides valuable insights on effective back mark design, based on the analysis of a machine learning model, trained to distinguish pigs via their back marks. Specifically, a neural network of type ResNet-50 was trained to classify ten pigs with unique back marks. The analysis of the model's predictions highlights the significance of certain design choices, even in controlled settings. Most importantly, the set of back marks must be designed such that each mark remains unambiguous under conditions of motion blur, diverse view angles and occlusions, caused by animal behaviour. Further, the back mark design must consider data augmentation strategies commonly employed during mode...

Originally published on March 27, 2026. Curated by AI News.

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