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Advances in machine learning framework for near-infrared spectroscopy: a taxonomic review on food quality assessment | Synapse
March 3, 2026
Open Access
Advances in machine learning framework for near-infrared spectroscopy: a taxonomic review on food quality assessment
TN
Thi Hoang Phuong Nguyen
Key Points
Machine learning frameworks enhance food quality assessment through near-infrared spectroscopy, improving accuracy and efficiency.
The review identifies key algorithms that significantly optimize near-infrared data analysis with success metrics highlighted.
Assessment examines various methodologies in near-infrared spectroscopy for food quality, emphasizing practical applications.
Implications of incorporating advanced machine learning could transform food safety and quality monitoring processes.
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Thi Hoang Phuong Nguyen (Wed,) studied this question.
synapsesocial.com/papers/69a75fcfc6e9836116a2bd9a