高光谱成像技术无损检测果蔬品质变质的研究进展。

IF 7.3 1区 农林科学 Q1 FOOD SCIENCE & TECHNOLOGY
Guoling Wan, Jianguo He, Xianghong Meng, Guishan Liu, Jingjing Zhang, Fang Ma, Qian Zhang, Di Wu
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引用次数: 0

摘要

随着人们对优质农产品需求的不断增加,水果和蔬菜的内在质量和外在质量问题受到了全球的广泛关注。为了获得健康的果蔬,必须发展先进的无损检测技术,以识别目标样品的质量劣化。高光谱成像(HSI)技术包含丰富的光谱和成像信息,能够获得水果和蔬菜品质劣化的详细响应。综述了果蔬分析领域中物理、化学和生物因素引起品质劣化的基本机理和危害类型。总结了各种形式的变质,包括表面缺陷、冷伤、机械损伤、萎蔫、褐变和微生物感染。此外,本综述还提供了HSI技术与机器学习算法相结合的最新进展,用于不同品种水果和蔬菜的质量评估和区分。它还批判性地讨论了HSI技术在实际应用中的现有挑战和未来前景。尽管存在高维高光谱数据和有限样本数量的限制,但多传感器融合架构和人工智能算法的持续发展将推动HSI技术从实验室发展到工业应用中的在线监测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hyperspectral imaging technology for nondestructive identification of quality deterioration in fruits and vegetables: a review.

With the increasing demand for high quality agri-food commodities, the issues of internal and external quality of fruits and vegetables have received widespread attention globally. To obtain the healthy fruits and vegetables, it is essential to develop advanced nondestructive detection technologies for identification of quality deterioration of target sample. Hyperspectral imaging (HSI) technology contains rich spectral and imaging information, which is capable of acquiring a detailed response of quality deterioration in fruits and vegetables. The review delves into the fundamental mechanism and damage type of quality deterioration caused by physical, chemical and biological factors within the domain of fruits and vegetables analysis. Various forms of deterioration encompassing surface defects, chilling injury, mechanical damage, wilting, browning, and microbial infection are summarized. Moreover, this overview also provides recent advances of HSI technology coupled with machine learning algorithms for quality evaluation and discrimination of different varieties fruits and vegetables. It also critically discusses the existing challenges and future prospects of the HSI technology in actual applications. Despite the extant limitations resulting from high-dimensional hyperspectral data and limited number of samples, the ongoing evolution of multi-sensor fusion architectures and artificial intelligence algorithms will promote HSI technology from laboratory to on-line monitoring in industrial applications.

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来源期刊
CiteScore
22.60
自引率
4.90%
发文量
600
审稿时长
7.5 months
期刊介绍: Critical Reviews in Food Science and Nutrition serves as an authoritative outlet for critical perspectives on contemporary technology, food science, and human nutrition. With a specific focus on issues of national significance, particularly for food scientists, nutritionists, and health professionals, the journal delves into nutrition, functional foods, food safety, and food science and technology. Research areas span diverse topics such as diet and disease, antioxidants, allergenicity, microbiological concerns, flavor chemistry, nutrient roles and bioavailability, pesticides, toxic chemicals and regulation, risk assessment, food safety, and emerging food products, ingredients, and technologies.
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