PriMera Scientific Engineering (ISSN: 2834-2550)

Research Article

Volume 5 Issue 2

Adaptive Deep Learning for Image-Based Estrus Prediction and Detection in Dairy Cows

Watchara Ninphet, Noppadol Amdee and Adisak Sangsongfa*

July 16, 2024

DOI : 10.56831/PSEN-05-143

Abstract

Artificial intelligence (AI) technology is significant in modern daily life.  It is so influential that many consider technology the cornerstone of this era.  Even in agriculture, there is a new concept known as Smart Farming.  In a recent study, deep learning was adapted for predicting and detecting estrus in cows by adjusting the parameters of the deep learning model.  A Convolutional Neural Network utilizing the Artificial Immunity System algorithm was employed to optimize the hyperparameters.  The results of this optimization showed an accuracy of 98.361%.  YOLOv5 deep learning was also used to detect real-time estrus, with mAP50 = 0.995, mAP50-95 = 0.887, and F1-Score averages = 0.993.

Keywords: dairy cows; deep learning; estrus prediction; image

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