Advanced chemometrics toward robust spectral analysis for fruit quality evaluation

IF 15.1 1区 农林科学 Q1 FOOD SCIENCE & TECHNOLOGY Trends in Food Science & Technology Pub Date : 2024-07-02 DOI:10.1016/j.tifs.2024.104612
Xiaolei Zhang , Jie Yang
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Abstract

Background

The application of visible/near-infrared (Vis/NIR) spectroscopy for fruit quality evaluation has garnered significant attention over the past few decades. Various chemometric techniques have been developed to predict fruit quality from spectral data. However, the broad applicability of existing chemometric models is limited by unpredictable data variability caused by various biological factors, instrumental settings, and measurement conditions. Deep learning has emerged as a leading methodology, offering substantial improvements in the accuracy and robustness of fruit quality assessments.

Scope and approach

This review examines the challenges of model robustness in fruit spectral analysis, tracing the advancement from conventional chemometrics to deep learning approaches. Developments in chemometric methods to enhance model reliability are explored, encompassing dataset-level, variable-level, and model parameter-level strategies, while outlining their applicability and limitations. Recent advances in deep learning-based techniques, e.g., transfer learning, multi-task learning, multi-modal data fusion, and knowledge-guided model design, are further highlighted, providing prospective pathways for achieving superior model robustness.

Key findings and conclusions

Current chemometric methods have enhanced model accuracy and proven effective in fruit spectral analysis. While the results are improved for certain research objectives, many analyses remain dependent on specific dataset characteristics and manual feature engineering, such as preprocessing, which limits their generalizability. Deep learning techniques with advanced feature extraction capabilities have shown promise in reducing the need for manually engineered features and expanding model robustness. However, further investigation into the applicability and limitations of these models is crucial for their successful integration into chemometric analysis.

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利用先进的化学计量学进行稳健的光谱分析以评估水果质量
过去几十年来,应用可见光/近红外(Vis/NIR)光谱进行水果质量评价已引起人们的极大关注。目前已开发出多种化学计量技术,用于根据光谱数据预测水果质量。然而,由于各种生物因素、仪器设置和测量条件造成的不可预测的数据变异性,限制了现有化学计量模型的广泛适用性。深度学习已成为一种领先的方法,大大提高了水果质量评估的准确性和稳健性。本综述探讨了水果光谱分析中模型稳健性所面临的挑战,追溯了从传统化学计量学到深度学习方法的发展历程。文章探讨了化学计量学方法在提高模型可靠性方面的发展,包括数据集级、变量级和模型参数级策略,同时概述了这些方法的适用性和局限性。进一步强调了基于深度学习技术的最新进展,如迁移学习、多任务学习、多模态数据融合和知识引导的模型设计,为实现卓越的模型稳健性提供了前景广阔的途径。当前的化学计量学方法提高了模型的准确性,并在水果光谱分析中被证明是有效的。虽然针对某些研究目标的结果有所改进,但许多分析仍然依赖于特定的数据集特征和人工特征工程(如预处理),这限制了它们的通用性。具有先进特征提取能力的深度学习技术在减少人工特征工程的需求和扩大模型稳健性方面已显示出前景。然而,进一步研究这些模型的适用性和局限性对于将其成功整合到化学计量学分析中至关重要。
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来源期刊
Trends in Food Science & Technology
Trends in Food Science & Technology 工程技术-食品科技
CiteScore
32.50
自引率
2.60%
发文量
322
审稿时长
37 days
期刊介绍: Trends in Food Science & Technology is a prestigious international journal that specializes in peer-reviewed articles covering the latest advancements in technology, food science, and human nutrition. It serves as a bridge between specialized primary journals and general trade magazines, providing readable and scientifically rigorous reviews and commentaries on current research developments and their potential applications in the food industry. Unlike traditional journals, Trends in Food Science & Technology does not publish original research papers. Instead, it focuses on critical and comprehensive reviews to offer valuable insights for professionals in the field. By bringing together cutting-edge research and industry applications, this journal plays a vital role in disseminating knowledge and facilitating advancements in the food science and technology sector.
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