Learning-based estimation of cattle weight gain and its influencing factors
Muhammad Riaz Hasib Hossain, Rafiqul Islam, Shawn R. McGrath, Md, Zahidul Islam, and David Lamb

TL;DR
This paper reviews and analyzes machine learning methods for estimating cattle weight gain, highlighting current tools, challenges, and future research directions to improve accuracy and consistency in non-invasive monitoring.
Contribution
It provides a comprehensive review of ML techniques for cattle weight gain estimation, identifying gaps and proposing future research directions.
Findings
Advanced ML approaches significantly improve CWG estimation accuracy.
Current tools and features vary widely, affecting consistency.
Identified research gaps for future exploration.
Abstract
Many cattle farmers still depend on manual methods to measure the live weight gain of cattle at set intervals, which is time consuming, labour intensive, and stressful for both the animals and handlers. A remote and autonomous monitoring system using machine learning (ML) or deep learning (DL) can provide a more efficient and less invasive method and also predictive capabilities for future cattle weight gain (CWG). This system allows continuous monitoring and estimation of individual cattle live weight gain, growth rates and weight fluctuations considering various factors like environmental conditions, genetic predispositions, feed availability, movement patterns and behaviour. Several researchers have explored the efficiency of estimating CWG using ML and DL algorithms. However, estimating CWG suffers from a lack of consistency in its application. Moreover, ML or DL can provide weight…
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Taxonomy
MethodsSparse Evolutionary Training
