Enhancing poultry health management through machine learning-based analysis of vocalization signals dataset.

Autor: Adebayo S; College of Agriculture, Engineering and Science, Bowen University, Iwo Nigeria., Aworinde HO; College of Computing and Communication Studies, Bowen University, Iwo Nigeria., Akinwunmi AO; College of Computing and Communication Studies, Bowen University, Iwo Nigeria., Alabi OM; College of Agriculture, Engineering and Science, Bowen University, Iwo Nigeria., Ayandiji A; College of Agriculture, Engineering and Science, Bowen University, Iwo Nigeria., Sakpere AB; Computer Science Department, University of Ibadan, Ibadan Nigeria., Adeyemo A; College of Computing and Communication Studies, Bowen University, Iwo Nigeria., Oyebamiji AK; College of Agriculture, Engineering and Science, Bowen University, Iwo Nigeria., Olaide O; College of Computing and Communication Studies, Bowen University, Iwo Nigeria., Kizito E; College of Computing and Communication Studies, Bowen University, Iwo Nigeria.
Jazyk: angličtina
Zdroj: Data in brief [Data Brief] 2023 Aug 28; Vol. 50, pp. 109528. Date of Electronic Publication: 2023 Aug 28 (Print Publication: 2023).
DOI: 10.1016/j.dib.2023.109528
Abstrakt: Population expansion and rising consumer demand for nutrient-dense meals have both contributed to an increase in the consumption of animal protein worldwide. A significant portion of the meat and eggs used for human consumption come from the poultry industry. Early diagnosis and warning of infectious illnesses in poultry are crucial for enhancing animal welfare and minimizing losses in the breeding and production systems for poultry. On the other hand, insufficient techniques for early diagnosis as well as infectious disease control in poultry farms occasionally fail to stop declining productivity and even widespread death. Individual physiological, physical, and behavioral symptoms in poultry, such as fever-induced increases in body temperature, abnormal vocalization due to respiratory conditions, and abnormal behavior due to pathogenic infections, frequently represent the health status of the animal. When birds have respiratory problems, they make strange noises like coughing and snoring. The work is geared towards compiling a dataset of chickens that were both healthy and unhealthy. 100 day-old poultry birds were purchased and split into two groups at the experimental site, the poultry research farm at Bowen University. For respiratory illnesses, the first group received treatment, whereas the second group did not. After that, the birds were separated and caged in a monitored environment. To eliminate extraneous sounds and background noise that might affect the analysis, microphones were set a reasonable distance away from the birds. The data was gathered using 24-bit samples at 96 kHz. For 65 days, three times per day (morning, afternoon, and night) of audio data were continually collected. Food and water are constantly provided to the birds during this time. During this time, the birds have constant access to food and water. After 30 days, the untreated group started to sound sick with respiratory issues. This information was also noted as being unhealthy. Chickens' audio signals were recorded, saved in MA4, and afterwards converted to WAV format. This dataset's creation is intended to aid in the design of smart technologies capable of early detection and monitoring of the status of birds in poultry farms in a continuous, noninvasive, and automated way.
(© 2023 The Author(s).)
Databáze: MEDLINE