Research Progress on Machine Learning and Computer Vision Technology in Food Quality Evaluation

被引:2
作者
Huang X. [1 ]
Zhang K. [2 ]
Liu Y. [2 ]
Chen H. [1 ]
Huang F. [1 ]
Wei F. [1 ,3 ]
机构
[1] Hubei Key Laboratory of Lipid Chemistry and Nutrition, Oil Crops and Lipids Process Technology National & Local Joint Engineering Laboratory, Oil Crops Research Institute, Chinese Academy of Agricultural Sciences, Wuhan
[2] Key Laboratory of Agricultural Information Acquisition Technology, Ministry of Agriculture and Rural Affairs, College of Information and Electrical Engineering, China Agricultural University, Beijing
[3] Hubei Hongshan Laboratory, Wuhan
来源
Shipin Kexue/Food Science | 2024年 / 45卷 / 12期
关键词
computer vision; food quality; food testing; machine learning;
D O I
10.7506/spkx1002-6630-20240131-284
中图分类号
学科分类号
摘要
In recent years, with rising concerns over food quality and safety, computer vision technology has gradually attracted attention and begun to be widely used in the field of food quality evaluation. Machine learning technologies such as artificial neural networks (ANN), convolutional neural networks (CNN), and support vector machines (SVM) allow automatic assessment and monitoring of food quality by training on large amounts of food images and related data. Particularly, with the development of deep learning, the computer is now able to more accurately recognize food features such as appearance, shape, and color, thereby allowing food classification, prediction and quality monitoring. In addition to its conventional application in food quality assessment, learning technologies also find application in more complex tasks such as defect detection, foreign object detection, and freshness assessment. These technologies not only improve the efficiency of food production and processing but also reduce errors caused by human factors, thereby ensuring food quality and safety. However, despite the significant progress in the application of learning technologies in food quality assessment, there are still challenges that need to be overcome. For instance, the high cost of acquiring and annotating food image datasets, as well as insufficient data quality and quantity, may affect the performance and generalization ability of models. Furthermore, the interpretability and transparency of models are important issues, especially when explaining or making decisions on food quality assessment results. Therefore, further research is needed to explore how to improve the quality and scale of datasets, optimize the robustness and interpretability of models, and develop more efficient and sustainable food quality assessment systems. © 2024 Chinese Chamber of Commerce. All rights reserved.
引用
收藏
页码:1 / 10
页数:9
相关论文
共 62 条
[1]  
BROSNAN T, Su N D W., Improving quality inspection of food products by computer vision: a review, Journal of Food Engineering, 61, 1, pp. 3-16, (2004)
[2]  
DAMEZ J L, CLERJON S., Quantifying and predicting meat and meat products quality attributes using electromagnetic waves: an overview, Meat Science, 95, 4, pp. 879-896, (2013)
[3]  
GOYACHE F, BAHAMONDE A, ALONSO J, Et al., The usefulness of artificial intelligence techniques to assess subjective quality of products in the food industry, Trends in Food Science & Technology, 12, 10, pp. 370-381, (2001)
[4]  
TEIXEIRA A C, RIBEIRO J, MORAIS R, Et al., A systematic review on automatic insect detection using deep learning, Agriculture, 13, 3, (2023)
[5]  
RADY A, EKRAMIRAD N, ADEDEJI A A, Et al., Hyperspectral imaging for detection of codling moth infestation in GoldRush apples, Postharvest Biology and Technology, 129, pp. 37-44, (2017)
[6]  
WANG Q Y, Wu D H, Su N Z Z, Et al., Design, integration, and evaluation of a robotic peach packaging system based on deep learning, Computers and Electronics in Agriculture, 211, (2023)
[7]  
RAJ R, COSGuN A, Kulic D N., Strawberry water content estimation and ripeness classification using hyperspectral sensing, Agronomy, 12, 2, (2022)
[8]  
SRICHAROON RATANA M, THOMPSON A K, TEERACHAICHAYuT S., use of near infrared hyperspectral imaging as a nondestructive method of determining and classifying shelf life of cakes, LWT-Food Science and Technology, 136, (2021)
[9]  
LIAKOS K G, BuSATO P, MOSHOu D, Et al., Machine learning in agriculture: a review, Sensors, 18, 8, (2018)
[10]  
MENICHETTI G, RAVANDI B, MOZAFFARIAN D, Et al., Machine learning prediction of the degree of food processing, Nature Communications, 14, 1, (2023)