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Main Authors: Arrighi, Leonardo, de Moraes, Ingrid Alves, Zullich, Marco, Simonato, Michele, Barbin, Douglas Fernandes, Junior, Sylvio Barbon
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2504.10527
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author Arrighi, Leonardo
de Moraes, Ingrid Alves
Zullich, Marco
Simonato, Michele
Barbin, Douglas Fernandes
Junior, Sylvio Barbon
author_facet Arrighi, Leonardo
de Moraes, Ingrid Alves
Zullich, Marco
Simonato, Michele
Barbin, Douglas Fernandes
Junior, Sylvio Barbon
contents Artificial Intelligence (AI) has become essential for analyzing complex data and solving highly-challenging tasks. It is being applied across numerous disciplines beyond computer science, including Food Engineering, where there is a growing demand for accurate and reliable predictions to meet stringent food quality standards. However, this requires increasingly complex AI models, raising concerns. In response, eXplainable AI (XAI) has emerged to provide insights into AI decision-making, aiding model interpretation by developers and users. Nevertheless, XAI remains underutilized in Food Engineering, limiting model reliability. For instance, in food quality control, AI models using spectral imaging can detect contaminants or assess freshness levels, but their opaque decision-making process hinders adoption. XAI techniques such as SHAP (Shapley Additive Explanations) and Grad-CAM (Gradient-weighted Class Activation Mapping) can pinpoint which spectral wavelengths or image regions contribute most to a prediction, enhancing transparency and aiding quality control inspectors in verifying AI-generated assessments. This survey presents a taxonomy for classifying food quality research using XAI techniques, organized by data types and explanation methods, to guide researchers in choosing suitable approaches. We also highlight trends, challenges, and opportunities to encourage the adoption of XAI in Food Engineering.
format Preprint
id arxiv_https___arxiv_org_abs_2504_10527
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Explainable Artificial Intelligence Techniques for Interpretation of Food Models: a Review
Arrighi, Leonardo
de Moraes, Ingrid Alves
Zullich, Marco
Simonato, Michele
Barbin, Douglas Fernandes
Junior, Sylvio Barbon
Artificial Intelligence
Computers and Society
A.1
Artificial Intelligence (AI) has become essential for analyzing complex data and solving highly-challenging tasks. It is being applied across numerous disciplines beyond computer science, including Food Engineering, where there is a growing demand for accurate and reliable predictions to meet stringent food quality standards. However, this requires increasingly complex AI models, raising concerns. In response, eXplainable AI (XAI) has emerged to provide insights into AI decision-making, aiding model interpretation by developers and users. Nevertheless, XAI remains underutilized in Food Engineering, limiting model reliability. For instance, in food quality control, AI models using spectral imaging can detect contaminants or assess freshness levels, but their opaque decision-making process hinders adoption. XAI techniques such as SHAP (Shapley Additive Explanations) and Grad-CAM (Gradient-weighted Class Activation Mapping) can pinpoint which spectral wavelengths or image regions contribute most to a prediction, enhancing transparency and aiding quality control inspectors in verifying AI-generated assessments. This survey presents a taxonomy for classifying food quality research using XAI techniques, organized by data types and explanation methods, to guide researchers in choosing suitable approaches. We also highlight trends, challenges, and opportunities to encourage the adoption of XAI in Food Engineering.
title Explainable Artificial Intelligence Techniques for Interpretation of Food Models: a Review
topic Artificial Intelligence
Computers and Society
A.1
url https://arxiv.org/abs/2504.10527