Chicken weight provides information about growth and feed conversion in order to identify deviations from the expected homogeneous growth trend of the birds. Precision Livestock Farming (PLF) can support the farmer through the use of sensors, cameras and microphones. Previous studies showed a significant correlation (p<0.001) between the frequency of vocalisation and the age and weight of the broiler. In this study, recordings were made in an automated, non-invasive way through the entire life of the birds, to evaluate the frequency variation of the sounds emitted during production cycles. In total, sound data collected during 8 production cycles (in an intensive broiler farm – 30,000 birds reared per round) were analysed. Sound data were manually and automatically compared with the weight of the birds automatically measured. Sound analysis was performed based on the amplitude and frequency of the sound signal in audio files recorded at farm level. The aim of this study was to sample automatically broiler vocalisations under normal farm conditions, to identify and model the relation between animal sounds and growth trend, and develop a tool to automatically detect the growth level of the animals based on the frequency of the vocalisation. The model used to predict the weight as a function of the Peak Frequency (PF) confirmed that the animal weight could be predicted by the frequency analysis of the sounds emitted at farm level although a more accurate editing of the audio file is necessary.

Using broiler sound frequency to model weight / I. Fontana, E. Tullo, M. Hemeryck, M. Guarino - In: Animal environment and welfare / [a cura di] J.-q. Ni, T.-T. Lim, C. Wang. - [s.l] : China Agriculture, 2015 Oct. - ISBN 9787109210226. - pp. 341-348 (( convegno ISAEW tenutosi a Chongqing nel 2015.

Using broiler sound frequency to model weight

I. Fontana
Primo
;
E. Tullo
;
M. Guarino
Ultimo
2015

Abstract

Chicken weight provides information about growth and feed conversion in order to identify deviations from the expected homogeneous growth trend of the birds. Precision Livestock Farming (PLF) can support the farmer through the use of sensors, cameras and microphones. Previous studies showed a significant correlation (p<0.001) between the frequency of vocalisation and the age and weight of the broiler. In this study, recordings were made in an automated, non-invasive way through the entire life of the birds, to evaluate the frequency variation of the sounds emitted during production cycles. In total, sound data collected during 8 production cycles (in an intensive broiler farm – 30,000 birds reared per round) were analysed. Sound data were manually and automatically compared with the weight of the birds automatically measured. Sound analysis was performed based on the amplitude and frequency of the sound signal in audio files recorded at farm level. The aim of this study was to sample automatically broiler vocalisations under normal farm conditions, to identify and model the relation between animal sounds and growth trend, and develop a tool to automatically detect the growth level of the animals based on the frequency of the vocalisation. The model used to predict the weight as a function of the Peak Frequency (PF) confirmed that the animal weight could be predicted by the frequency analysis of the sounds emitted at farm level although a more accurate editing of the audio file is necessary.
Broiler; vocalisation; growth trend; frequency analysis; Precision Livestock Farming
Settore AGR/10 - Costruzioni Rurali e Territorio Agroforestale
   Bright Farm by Precision Livestock Farming
   EU-PLF
   EUROPEAN COMMISSION
   FP7
   311825
ott-2015
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/481254
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