高光谱成像
质量(理念)
观点
计算机科学
数据质量
食品质量
过程(计算)
遥感
人工智能
风险分析(工程)
数据挖掘
数据科学
模式识别(心理学)
地理
服务(商务)
业务
营销
视觉艺术
化学
艺术
哲学
操作系统
认识论
食品科学
作者
Hongyu Xu,Jie Ren,Jidong Lin,Shijie Mao,Zijin Xu,Ziwei Chen,Jiajing Zhao,Yangyang Wu,Ning Xu,Ping Wang
标识
DOI:10.1007/s11694-023-01822-x
摘要
Over the past decades, food quality and safety have seriously been disturbing public health. Traditional monitoring methods of food-quality evaluation have been time consuming and laborious. In recent years, visible/near-infrared hyperspectral imaging (Vis/NIR-HSI)—as a nondestructive, high-efficiency, and rapid method—has become one of the strongest tools for food evaluation. Using this tool involves an analysis process that includes obtaining high-quality data and training models. Although recent works have mainly focused on the development and optimization of models—ignoring the importance of high-quality data acquisition—this paper reviews the precautionary measures taken in the form of the operational steps that are followed in the process of acquiring food-related information. This includes the spectral mode selection, sample, waveband range, ROI extraction, spectra parameters, data processing, and focuses on finding solutions to problems such as large curvature and specular reflection. The application and selection of the quality parameters of different food items were introduced in their assessment. Finally, based on the above summary, an updated overview of the application of Vis/NIR-HSI have been presented and some viewpoints and directions for future research have also been provided. It discusses the impact of high-quality data on the assessment results of visible/near-infrared hype-rspectral imaging. It proposes solutions for the problems arising from food forms, such as large curvature and specul-ar reflection. Enriched with the development direction on food quality assessment. It introduces how the selection of quality parameters to evaluate food quality is done.
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