Hyperspectral Imaging Coupled with Multivariate Analyses for Efficient Prediction of Chemical, Biological and Physical Properties of Seafood Products

IF 5.3 2区 农林科学 Q1 FOOD SCIENCE & TECHNOLOGY
Azfar Ismail, Dong-Gyun Yim, Ghiseok Kim, Cheorun Jo
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引用次数: 2

Abstract

Quality evaluation of seafood is essential for consumer satisfaction. Hyperspectral imaging (HSI) has been introduced in the seafood industry for assessing seafood quality, safety, authenticity, and adulteration whilst maintaining sample integrity. However, there is limited information on multivariate analyses applied using the HSI for seafood quality. This review presents a comprehensive summary of the existing published research to describe the application of HSI coupled with multivariate analyses of seafood products. Applications of multivariate analyses for map distribution, spectral selection, and data extraction of the HSI system in the seafood industry are highlighted. Trends and challenges using HSI in the seafood industry are also discussed in this review. As a rapid and non-destructive tool, HSI technology shows great potential for evaluating the quality of seafood products by on-line or at-line detection. The ability to provide spatial and spectral information coupled with multivariate analyses makes the HSI system broadly in the seafood industry. Deep learning performed by artificial intelligence is a great solution recently for data classification of hyperspectral imaging with a shift-invariant feature of seafood products. HSI systems fitted with multivariate analyses software could be eased in the large-scale seafood industry to determine the chemical, biological, and physical quality traits of seafood products.

Abstract Image

高光谱成像与多变量分析相结合用于海产品化学、生物和物理特性的有效预测
海产品的质量评价是消费者满意的关键。高光谱成像(HSI)已被引入海产品行业,用于评估海产品的质量、安全、真实性和掺假,同时保持样品的完整性。然而,使用HSI对海产品质量进行多变量分析的信息有限。这篇综述对现有发表的研究进行了全面的总结,以描述HSI与海产品多变量分析的应用。重点介绍了HSI系统在海产品行业中地图分布、光谱选择和数据提取等多变量分析的应用。本综述还讨论了在海产品行业中使用HSI的趋势和挑战。作为一种快速、非破坏性的工具,HSI技术在在线或在线检测海产品质量方面显示出巨大的潜力。提供空间和光谱信息以及多变量分析的能力使HSI系统在海产品行业得到广泛应用。基于人工智能的深度学习是目前海产品高光谱成像数据分类的一个很好的解决方案。采用多变量分析软件的HSI系统可用于大规模海产品的化学、生物和物理品质特征的测定。
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来源期刊
Food Engineering Reviews
Food Engineering Reviews FOOD SCIENCE & TECHNOLOGY-
CiteScore
14.20
自引率
1.50%
发文量
27
审稿时长
>12 weeks
期刊介绍: Food Engineering Reviews publishes articles encompassing all engineering aspects of today’s scientific food research. The journal focuses on both classic and modern food engineering topics, exploring essential factors such as the health, nutritional, and environmental aspects of food processing. Trends that will drive the discipline over time, from the lab to industrial implementation, are identified and discussed. The scope of topics addressed is broad, including transport phenomena in food processing; food process engineering; physical properties of foods; food nano-science and nano-engineering; food equipment design; food plant design; modeling food processes; microbial inactivation kinetics; preservation technologies; engineering aspects of food packaging; shelf-life, storage and distribution of foods; instrumentation, control and automation in food processing; food engineering, health and nutrition; energy and economic considerations in food engineering; sustainability; and food engineering education.
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