Universal Bovine Identification via Depth Data and Deep Metric Learning
Asheesh Sharma, Lucy Randewich, William Andrew, Sion Hannuna, Neill, Campbell, Siobhan Mullan, Andrew W. Dowsey, Melvyn Smith, Mark Hansen, Tilo, Burghardt

TL;DR
This paper introduces a novel depth-only deep learning system for individual cattle identification using 3D data, enabling accurate, real-time monitoring without the need for species-specific markings.
Contribution
It presents a new deep-metric learning approach with depth data and evaluates two architectures, ResNet and PointNet, for cattle identification, along with a new dataset CowDepth2023.
Findings
High accuracy achieved with both ResNet and PointNet architectures.
Depth data alone suffices for reliable cattle identification.
The method allows for easy enrollment of new individuals without retraining.
Abstract
This paper proposes and evaluates, for the first time, a top-down (dorsal view), depth-only deep learning system for accurately identifying individual cattle and provides associated code, datasets, and training weights for immediate reproducibility. An increase in herd size skews the cow-to-human ratio at the farm and makes the manual monitoring of individuals more challenging. Therefore, real-time cattle identification is essential for the farms and a crucial step towards precision livestock farming. Underpinned by our previous work, this paper introduces a deep-metric learning method for cattle identification using depth data from an off-the-shelf 3D camera. The method relies on CNN and MLP backbones that learn well-generalised embedding spaces from the body shape to differentiate individuals -- requiring neither species-specific coat patterns nor close-up muzzle prints for operation.…
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Taxonomy
TopicsFood Supply Chain Traceability · Identification and Quantification in Food · Milk Quality and Mastitis in Dairy Cows
