Stress Detection and Classification of Laying Hens by Sound Analysis

Stress adversely affects the wellbeing of commercial chickens, and comes with an economic cost to the industry that cannot be ignored. In this paper, we first develop an inexpensive and non-invasive, automatic online-monitoring prototype that uses sound data to notify producers of a stressful situat...

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Published inAnimal bioscience Vol. 28; no. 4; pp. 592 - 598
Main Authors Lee, Jonguk, Noh, Byeongjoon, Jang, Suin, Park, Daihee, Chung, Yongwha, Chang, Hong-Hee
Format Journal Article
LanguageEnglish
Published Korea (South) Asian - Australasian Association of Animal Production Societies 01.04.2015
Asian-Australasian Association of Animal Production Societies (AAAP) and Korean Society of Animal Science and Technology (KSAST)
Asian-Australasian Association of Animal Production Societies
아세아·태평양축산학회
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ISSN1011-2367
2765-0189
1976-5517
2765-0235
DOI10.5713/ajas.14.0654

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Summary:Stress adversely affects the wellbeing of commercial chickens, and comes with an economic cost to the industry that cannot be ignored. In this paper, we first develop an inexpensive and non-invasive, automatic online-monitoring prototype that uses sound data to notify producers of a stressful situation in a commercial poultry facility. The proposed system is structured hierarchically with three binary-classifier support vector machines. First, it selects an optimal acoustic feature subset from the sound emitted by the laying hens. The detection and classification module detects the stress from changes in the sound and classifies it into subsidiary sound types, such as physical stress from changes in temperature, and mental stress from fear. Finally, an experimental evaluation was performed using real sound data from an audio-surveillance system. The accuracy in detecting stress approached 96.2%, and the classification model was validated, confirming that the average classification accuracy was 96.7%, and that its recall and precision measures were satisfactory.
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Department of Computer and Information Science, College of Science and Technology, Korea University, Sejong 339-700, Korea
G704-001112.2015.28.4.012
ISSN:1011-2367
2765-0189
1976-5517
2765-0235
DOI:10.5713/ajas.14.0654