posted on 2025-04-16, 13:39authored byChen Yang, Zhiming Guo, Douglas Fernandes Barbin, Zhiqiang Dai, Nicholas Watson, Megan Povey, Xiaobo Zou
Quality inspection of fruits and vegetables linked to
food safety
monitoring and quality control. Traditional chemical analysis and
physical measurement techniques are reliable, they are also time-consuming,
costly, and susceptible to environmental and sample changes. Hyperspectral
imaging technology combined with deep learning methods can effectively
overcome these problems. Compared with human evaluation, automated
inspection improves inspection efficiency, reduces subjective error,
and promotes the intelligent and precise fruit and vegetable quality
inspection. This paper reviews reports on the application of hyperspectral
imaging technology combined to deep learning methods in various aspects
of fruits and vegetables quality assessment. In addition, the latest
applications of these technologies in the fields of fruit and vegetable
safety, internal quality, and external quality inspection are reviewed,
and the challenges and future development directions of hyperspectral
imaging technology combined with deep learning in this field are prospected.
Hyperspectral imaging combined with deep learning has shown significant
advantages in fruit and vegetable quality inspection, especially in
improving inspection accuracy and efficiency. Future research should
focus on reducing costs, optimizing equipment, personalizing feature
extraction, and model generalizability. In addition, the development
of lightweight models and the balance of accuracy, the enhancement
of the database and the importance of quantitative research should
also be brought to attention. These efforts will promote the wide
application of hyperspectral imaging technology in fruit and vegetable
inspection, improve its practicability in the actual production environment,
and bring important progress for food safety and quality management.