Precision Livestock Farming (PLF) emerges as a promising solution for revolutionising farming by enabling real time automated monitoring of animals through smart technologies. PLFprovides farmers with precise data to enhance farm management, increasing productivity and profitability. For instance,it allows for non-intrusive health assessments, contributing to maintaining a healthy herd while reducing stress associated with handling. In the poultry sector, image analysis can be utilised to monitor and analyse the behaviour of each hen in real time. Researchers have recently used machine learning algorithms to monitor the behaviour, health, and positioning of hens through computer vision techniques. Convolutional neural networks, a type of deep learning algorithm, have beenutilised for image analysis to identify and categorise various hen behaviours and track specific activities like feeding and drinking. This research presents an automated system for analysing laying hen movement using video footage from surveillance cameras.With a customised implementation of object tracking, the system can efficiently process hundreds of hours of videos while maintaining high measurement precision. Its modular implementation adapts well to optimally exploit the GPU computing capabilities of the hardware platform it is running on. The use of this system is beneficial for both real-time monitoring and post-processing, contributing to improved monitoring capabilities in precision livestock farming.

A new tool to improve the computation of animal kinetic activity indices in precision poultry farming

Carraro A.;Pravato M.;Marinello F.;Bordignon F.;Trocino A.;Xiccato G.;Pezzuolo A.
2025

Abstract

Precision Livestock Farming (PLF) emerges as a promising solution for revolutionising farming by enabling real time automated monitoring of animals through smart technologies. PLFprovides farmers with precise data to enhance farm management, increasing productivity and profitability. For instance,it allows for non-intrusive health assessments, contributing to maintaining a healthy herd while reducing stress associated with handling. In the poultry sector, image analysis can be utilised to monitor and analyse the behaviour of each hen in real time. Researchers have recently used machine learning algorithms to monitor the behaviour, health, and positioning of hens through computer vision techniques. Convolutional neural networks, a type of deep learning algorithm, have beenutilised for image analysis to identify and categorise various hen behaviours and track specific activities like feeding and drinking. This research presents an automated system for analysing laying hen movement using video footage from surveillance cameras.With a customised implementation of object tracking, the system can efficiently process hundreds of hours of videos while maintaining high measurement precision. Its modular implementation adapts well to optimally exploit the GPU computing capabilities of the hardware platform it is running on. The use of this system is beneficial for both real-time monitoring and post-processing, contributing to improved monitoring capabilities in precision livestock farming.
2025
   AGRITECH - NATIONAL RESEARCH CENTRE FOR AGRICULTURAL TECHNOLOGIES - AFFILIATO SPOKE 5 (UNITUS) - SUSTAINABLE PRODUCTIVITY AND MITIGATION OF ENVIRONMENTAL IMPACT IN LIVESTOCK SYSTEMS
   AGRITECH
   MUR
   PNRR M4C2 Investimento 1.4 POTENZIAMENTO STRUTTURE DI RICERCA E CREAZIONE DI “CAMPIONI NAZIONALI DI R&S” SU ALCUNE KEY ENABLING TECHNOLOGIES
   CN00000022CN00000022
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11577/3551770
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