2024
DOI: 10.4114/intartif.vol27iss74pp48-61
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FRESHNets: Highly Accurate and Efficient Food Freshness Assessment Based on Deep Convolutional Neural Networks

Jorge Felix Martínez Pazos,
Jorge Gulín González,
David Batard Lorenzo
et al.

Abstract: Food freshness classification is a growing concern in the food industry, mainly to protect consumer health and prevent illness and poisoning from consuming spoiled food. Intending to take a significant step towards improving food safety and quality control measures in the industry, this study presents two models based on deep learning for the classification of fruit and vegetable freshness: a robust model and an efficient model. Models’ performance evaluation shows remarkable results; in terms of accuracy, the… Show more

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