Autoencoder‐Based Eggshell Crack Detection Using Acoustic Signal

ABSTRACT Breaks or cracks in eggshells offer substantial food safety issues. Bacteria and viruses, in particular, are more likely to enter the egg through breaks and cracks, increasing the risk of food poisoning. Furthermore, deformations in the shell may compromise the integrity of the protective s...

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Veröffentlicht in:Journal of food process engineering 2024-11, Vol.47 (11), p.n/a
Hauptverfasser: Yabanova, İsmail, Balcı, Zekeriya, Yumurtacı, Mehmet, Ünler, Tarık
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container_issue 11
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creator Yabanova, İsmail
Balcı, Zekeriya
Yumurtacı, Mehmet
Ünler, Tarık
description ABSTRACT Breaks or cracks in eggshells offer substantial food safety issues. Bacteria and viruses, in particular, are more likely to enter the egg through breaks and cracks, increasing the risk of food poisoning. Furthermore, deformations in the shell may compromise the integrity of the protective shell, exposing the egg to more external variables and causing it to lose freshness and decay faster. To reduce such hazards, this research created an innovative crack detection system based on an autoencoder (AE) that uses acoustic signals from eggshells. A system that creates an acoustic effect by hitting the eggshell without damaging it was designed, and these effects were recorded through a microphone. Acoustic signal data of size 1 × 1000 was fed into k nearest neighbor (kNN), decision tree (DT), and support vector machine (SVM) classifiers. AE was employed to reduce data size in order to accommodate the raw data's unique features. This AE model, which reduces data size, was used with many classifiers and was able to accurately distinguish between intact and cracked eggs. The built AE‐based classifier model completed the classification procedure with 100% accuracy, including microcracks that are invisible to the naked eye. We used a mechanical effect on the eggshell to discriminate between cracked and intact eggs. The features of the signal created by this effect were extracted with an autoencoder and classified with Softmax, allowing intact and cracked eggs to be distinguished quickly and accurately.
doi_str_mv 10.1111/jfpe.14780
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source Wiley Online Library Journals Frontfile Complete
subjects acoustic signal
acoustics
autoencoder
classification
crack
decision support systems
egg shell
eggs
eggshell
food safety
freshness
microphones
risk
support vector machines
title Autoencoder‐Based Eggshell Crack Detection Using Acoustic Signal
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