Su Wen-Hao, Xue Huidan
Department of Agricultural Engineering, College of Engineering, China Agricultural University, Beijing 100083, China.
School of Economics and Management, Beijing University of Technology, Beijing 100124, China.
Foods. 2021 Sep 10;10(9):2146. doi: 10.3390/foods10092146.
Imaging spectroscopy has emerged as a reliable analytical method for effectively characterizing and quantifying quality attributes of agricultural products. By providing spectral information relevant to food quality properties, imaging spectroscopy has been demonstrated to be a potential method for rapid and non-destructive classification, authentication, and prediction of quality parameters of various categories of tubers, including potato and sweet potato. The imaging technique has demonstrated great capacities for gaining rapid information about tuber physical properties (such as texture, water binding capacity, and specific gravity), chemical components (such as protein, starch, and total anthocyanin), varietal authentication, and defect aspects. This paper emphasizes how recent developments in spectral imaging with machine learning have enhanced overall capabilities to evaluate tubers. The machine learning algorithms coupled with feature variable identification approaches have obtained acceptable results. This review briefly introduces imaging spectroscopy and machine learning, then provides examples and discussions of these techniques in tuber quality determinations, and presents the challenges and future prospects of the technology. This review will be of great significance to the study of tubers using spectral imaging technology.
成像光谱学已成为一种可靠的分析方法,可有效表征和量化农产品的品质属性。通过提供与食品质量特性相关的光谱信息,成像光谱学已被证明是一种用于快速、无损分类、鉴定和预测各类块茎(包括马铃薯和甘薯)质量参数的潜在方法。该成像技术在获取有关块茎物理特性(如质地、持水能力和比重)、化学成分(如蛋白质、淀粉和总花青素)、品种鉴定和缺陷方面的快速信息方面已展现出强大能力。本文着重介绍了光谱成像与机器学习的最新进展如何提升了评估块茎的整体能力。结合特征变量识别方法的机器学习算法已取得了可接受的结果。本综述简要介绍了成像光谱学和机器学习,然后提供了这些技术在块茎质量测定中的实例和讨论,并阐述了该技术面临的挑战和未来前景。本综述对于利用光谱成像技术研究块茎具有重要意义。