Abstract
Welfare concerns in poultry farming have driven the need for advanced monitoring solutions to study broiler activity and health. However, existing research predominantly relies on single-camera setups, which are prone to occlusions from equipment such as feeders and lighting, limiting their effectiveness. To address this, we propose a multi-camera setup that enables comprehensive broiler localization and tracking from a top-down view of the pen. To support this approach, we introduce MVBroTrack,1 an open-source dataset containing real-world data with annotations for various subtasks critical to broiler studies. We demonstrate robust performance of our multi-view detection pipeline throughout the six-week broiler lifespan despite significant changes in visual appearance. Additionally, we present a novel unsupervised tracking method that surpasses the traditional tracking by detection paradigm, improving the IDF1 score by 3% and increasing the proportion of mostly tracked broilers by 5%. By reducing the need for manual observation, our multi-camera pipeline facilitates exhaustive studies of broiler behavior and welfare, paving the way for significant advancements in poultry research and farming practices.
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Cardoen, T., de Carvalho, P. S., Antonissen, G., Tuyttens, F. A. M., Leroux, S., & Simoens, P. (2025). Multi-camera detection and tracking for individual broiler monitoring. Computers and Electronics in Agriculture, 237. https://doi.org/10.1016/j.compag.2025.110435
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