Determination of egg storage time at room temperature using a low-cost NIR spectrometer and machine learning techniques
Julian Coronel-Reyes, Ivan Ramirez-Morales, Enrique Fernandez-Blanco,, Daniel Rivero, Alejandro Pazos

TL;DR
This study introduces a low-cost, smartphone-connected NIR spectrometer combined with machine learning to non-destructively predict egg storage time at room temperature, offering a rapid and affordable freshness assessment method.
Contribution
It presents a novel approach using affordable devices and machine learning for egg freshness prediction, contrasting with prior expensive laboratory methods.
Findings
Achieved R-squared of 0.83 in predicting storage time.
Used a simple neural network with 10 neurons for accurate regression.
Demonstrated industrial potential for consumer-level egg freshness testing.
Abstract
Nowadays, consumers are more concerned about freshness and quality of food. Poultry egg storage time is a freshness and quality indicator in industrial and consumer applications, even though egg marking is not always required outside the European Union. Other authors have already published works using expensive laboratory equipment in order to determine the storage time and freshness in eggs. Oppositely, this paper presents a novel method based on low-cost devices for rapid and non-destructive prediction of egg storage time at room temperature (\deg C). H&N brown flock with 49-week-old hens were used as source for the sampled eggs. Those samples were daily scanned with a low-cost smartphone-connected near infrared reflectance (NIR) spectrometer for a period of 22 days starting to run from the egg laid. The resulting dataset of 660 samples was randomly splitted according to a…
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