a Department of Food Science , Stellenbosch University , Stellenbosch , South Africa.
Crit Rev Food Sci Nutr. 2018 Mar 4;58(4):575-590. doi: 10.1080/10408398.2016.1205548. Epub 2017 Aug 10.
The requirements of cereal research, as well as grading and evaluation of food products, have encouraged the development of nondestructive, rapid, and accurate analytical techniques to evaluate grain quality and safety. NIR hyperspectral imaging integrates spectroscopy and imaging techniques in one analytical system, allowing direct identification of chemical components and their distribution within the sample. It is a promising technique that may be implemented on-line, enabling the cereal industry to move away from subjective, manual classification and measuring methods. NIR hyperspectral imaging has gained popularity for rapidly acquiring information to enable the quantification, identification or differentiation of a variety of cereal properties. The technique can potentially replace multiple conventional chemical, microbial or physical tests with a single, automated image acquisition. Individual kernels can be analyzed nondestructively, enabling one to follow changes in the same kernel over time (e.g. fungal development). Although NIR hyperspectral imaging has not been extensively implemented in industry, it shows great potential for the development of an evaluation system to assess cereal grains, especially regarding variety discrimination and grading/classification properties. This review outlines the theory and principles of NIR hyperspectral imaging, and focuses specifically on its application in cereal science research and industry.
谷物研究的要求,以及食品产品的分级和评估,都鼓励开发无损、快速和准确的分析技术来评估谷物的质量和安全性。近红外高光谱成像将光谱学和成像技术集成在一个分析系统中,能够直接识别样品中的化学成分及其分布。这是一种很有前途的技术,它可以实现在线应用,使谷物行业摆脱主观的、手动的分类和测量方法。近红外高光谱成像因其能够快速获取信息,从而实现对各种谷物特性的定量、识别或区分而受到欢迎。该技术可以潜在地用单个自动化图像采集替代多个传统的化学、微生物或物理测试。可以对单个谷物进行无损分析,从而能够随着时间的推移跟踪同一谷物的变化(例如真菌的生长)。尽管近红外高光谱成像尚未在工业中广泛应用,但它在开发评估谷物的评估系统方面显示出巨大的潜力,特别是在品种鉴别和分级/分类特性方面。本文概述了近红外高光谱成像的理论和原理,并特别关注其在谷物科学研究和工业中的应用。