Litcius/Paper detail

Enhancing optical non-destructive methods for food quality and safety assessments with machine learning techniques: A survey

Xinhao Wang, Yihang Feng, Yi Wang, Honglin Zhu, Dongjin Song, Cangliang Shen, Yangchao Luo

2025Journal of Agriculture and Food Research25 citationsDOIOpen Access PDF

Abstract

Food quality and safety are critical to global health and economic stability, but traditional assessment methods, such as chemical assays and microbial culturing, are often destructive, time-consuming, and unsuitable for real-time and high-throughput applications. Optical non-destructive techniques, including imaging methods (e.g., red-green-blue (RGB) imaging, hyperspectral imaging (HSI)) and spectral methods (e.g., near-infrared (NIR) spectroscopy), offer real-time, precise, and non-invasive assessments while preserving sample integrity. However, the complex datasets generated by these techniques require advanced machine learning (ML) models for effective analysis. These methods generate complex, multidimensional datasets that align with ML approaches, unlocking advanced capabilities in data interpretation and decision-making. By integrating optical non-destructive techniques with ML models, ranging from classical algorithms like random forests (RF) and support vector machines (SVM) to deep learning architectures such as convolutional neural networks (CNNs), notable progress has been achieved in automating feature extraction, classification, and prediction tasks. This integration enhances the precision, scalability, and applicability of food quality and safety assessments, enabling tasks such as real-time grading, sorting, and microbial detection in diverse food systems. Advanced models like YOLO further expand the potential for real-time object detection in dynamic settings such as smart farms and food processing lines. Despite these advances, challenges remain in addressing the variability of food matrices, real-time processing limitations, and the need to integrate data from multiple optical models. This survey explores the integration of ML with optical non-destructive methods to enhance food quality and safety assessments, highlighting recent advancements and future opportunities. • Overview of imaging and spectral techniques for food evaluation. • Development of the workflow for machine learning in optical data analysis. • Machine learning integration to improve optical nondestructive methods in food assessments. • Evaluation of classical and deep learning approaches for optical non-destructive methods.

Topics & Concepts

Quality (philosophy)Food safetyComputer scienceNondestructive testingArtificial intelligenceFood scienceMedicineChemistryPhysicsRadiologyQuantum mechanicsSpectroscopy and Chemometric AnalysesSpectroscopy Techniques in Biomedical and Chemical ResearchWater Quality Monitoring and Analysis
Enhancing optical non-destructive methods for food quality and safety assessments with machine learning techniques: A survey | Litcius