综述与专题评论

高光谱成像技术在小麦品质检测中的研究进展

  • 张玉荣 ,
  • 吴雯靓 ,
  • 刘舒娴 ,
  • 史卓可 ,
  • 张咚咚 ,
  • 吴琼
展开
  • (河南工业大学 粮食和物资储备学院,粮食储藏与安全教育部工程研究中心,河南省粮食产后减损工程技术研究中心,河南 郑州,450001)
第一作者:硕士,教授(吴琼副教授为通信作者,E-mail:qiongwu0605@126.com)

收稿日期: 2024-07-23

  修回日期: 2024-08-13

  网络出版日期: 2025-05-28

基金资助

中国科协第九届青年人才托举工程项目(YESS20230131);财政部和农业农村部国家现代农业产业技术体系资助项目(CARS-03)

Research progress of hyperspectral imaging technology in wheat quality detection

  • ZHANG Yurong ,
  • WU Wenliang ,
  • LIU Shuxian ,
  • SHI Zhuoke ,
  • ZHANG Dongdong ,
  • WU Qiong
Expand
  • (School of Food and Strategic Reserves, Henan University of Technology, Research Center of Grain Storage and Security of Ministry of Education, Henan Provincial Engineering Technology Research Center on Grain Post harvest, Zhengzhou 450001, China)

Received date: 2024-07-23

  Revised date: 2024-08-13

  Online published: 2025-05-28

摘要

小麦是食品行业重要的生产原料和我国政府储备粮种之一,快速准确地检测小麦品质对提高其流通效率至关重要。高光谱成像技术(hyperspectral imaging technology, HSI)因其高效、准确、快速、无损的特点,在小麦品质检测领域具有良好前景。该文总结了HSI在小麦品质检测领域的应用研究进展,简述了目前HSI检测小麦品质时存在的问题,并对未来HSI的发展进行了分析和展望,以期为HSI在小麦品质快速无损检测领域的应用与相关研究提供参考。

本文引用格式

张玉荣 , 吴雯靓 , 刘舒娴 , 史卓可 , 张咚咚 , 吴琼 . 高光谱成像技术在小麦品质检测中的研究进展[J]. 食品与发酵工业, 2025 , 51(9) : 405 -412 . DOI: 10.13995/j.cnki.11-1802/ts.040554

Abstract

Wheat is one of the important grains in China with abundant nutrients and long history, and its quality has far-reaching effects on agricultural production, food processing, nutrition and health, so it is particularly important to detect wheat quality quickly and accurately.Hyperspectral imaging technology (HSI) is a combination of digital imaging technology and spectral technology, which has been widely used in wheat quality detection and achieved good research results.Compared with other inspection methods, HSI has the characteristics of high efficiency, accuracy, rapidity, and non-destructive, which has great potential and value to satisfy the needs of wheat production and processing.This paper introduced the principle and system components of HSI and summarized the application progress and current problems of HSI in wheat quality detection.This paper also analyzed and prospected the future development of HSI to provide a theoretical basis and technical support for future non-destructive testing of wheat quality.As advancements in HSI continue, it would play a pivotal role in the production and processing of wheat.

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