Detection Of Estrus In Bovine Using Machine Learning

Hemalatha, R. J. and Sonashree, S.P and Thamizhvani, T.R. and Vijaybaskar, V (2021) Detection Of Estrus In Bovine Using Machine Learning. In: 2021 Seventh International conference on Bio Signals, Images, and Instrumentation (ICBSII), Chennai, India.

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Abstract

Estrus refers to the reproductive stage of cattle during which ovulation occurs. The day of estrus plays an important role in the reproductive life of a cow. Inseminating cow at perfect time of ovulation was a big deal for farmers. Bovines that undergo Silent Estrus will not show any mounting behaviors or physical signs. So detecting estrus in cows undergoing silent estrus is also a challenging task. The main aim of this study is to propose a simple method to detect the estrus in cow by classifying cows into estrus and non-estrus groups , using machine learning algorithm based on correlating the milk parameters such as fat, pH, SNF, specific gravity, density and the age, amount of milking, frequency of milking and breed of the cow. For estrus cows, milk parameters like pH and fat show high significant change whereas SNF and density shows moderate significant change. The selected parameters are fed into machine learning algorithms like Decision Tree Classifiers. The classification based on the selected parameters specifies
higher performance for Decision Tree with accuracy 98%.
Thus, Decision Tree classifier is defined as an effective
classifier and a simple method to detect estrus in cow by
utilizing milk parameters. Keywords— Estrus, Bovine, fat, pH, Specific Gravity

Item Type: Conference or Workshop Item (Paper)
Subjects: Biomedical Engineering > Physiology Courses
Biomedical Engineering > Biomedical Engineering Design
Biomedical Engineering > Biomedical Process
Domains: Biomedical Engineering
Depositing User: Mr IR Admin
Date Deposited: 14 Sep 2024 09:21
Last Modified: 31 Mar 2026 17:46
URI: https://ir.vistas.ac.in/id/eprint/6071

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