Behavior-Specific Filtering for Enhanced Pig Behavior Classification in Precision Livestock Farming
Zhang, Zhen, Ha, Dong Sam, Morota, Gota, Shin, Sook
–arXiv.org Artificial Intelligence
Precision Livestock Farming (PLF) has emerged as a critical field for monitoring and improving animal health and behavior[1]. Accurate and continuous tracking of livestock behavior is essential for identifying early signs of health issues an d enabling timely intervention. Traditional methods for monitoring pig behavior, such as manual observation, are labor - intensive, limited in scalability, and prone to inaccuracies [2]. Recent advancements in PLF have introduced automated systems that lev erage biosensors to track behavior in real time. These sensors, often attached to animals, collect data that is both costeffective and reliable, making them indispensable for modern livestock management [3,4].
arXiv.org Artificial Intelligence
Jul-29-2025
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