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多源数据融合技术在苹果无损检测中的应用研究进展

郭琪1,2, 范艺璇1,2, 闫新焕1,2, 刘雪梅1,2, 曹宁1,2, 王震1,2, 潘少香1,2, 谭梦男1,2, 郑晓冬1,2(), 宋烨1,2()   

  1. 1. 中华全国供销合作总社济南果品研究所,济南,250014
    2. 山东省果蔬贮藏加工技术创新中心,山东 济南,250200
  • 收稿日期:2025-05-30 出版日期:2025-08-13
  • 基金项目:
    山东省重点研发计划项目(2024TZXD063); 中华全国供销合作总社科技创新项目(GXKJ-2024-016)
  • 作者简介:

    郭琪,硕士,研究实习员,研究方向为果蔬品质快速识别及评价。E-mail:

  • 通信作者:
    郑晓冬,硕士,研究员,研究方向为农产品质量安全控制与标准化。E-mail:
    宋烨,博士,研究员,研究方向为农产品流通质量安全与标准化。E-mail:

Advances in the Application of Multi-source Data Fusion Technology in Non-Destructive Detection of Apple

GUO Qi1,2, FAN Yixuan1,2, YAN Xinhuan1,2, LIU Xuemei1,2, CAO Ning1,2, WANG Zhen1,2, PAN Shaoxiang1,2, TAN Mengnan1,2, ZHENG Xiaodong1,2(), SONG Ye1,2()   

  1. 1. Jinan Fruit Research Institute, China Supply and Marketing Cooperatives, Jinan 250200, China
    2. Shandong Province Fruit and Vegetable Storage and Processing Technology Innovation Center, Jinan 250200, China
  • Received:2025-05-30 Online:2025-08-13
  • Foundation items:Shandong Province Key R&D Programme(2024TZXD063); All China Federation of Supply and Marketing Cooperatives Science and Technology Innovation Project(GXKJ-2024-016)
  • About author:

    GUO Qi, E-mail:

  • Corresponding author:
    ZHENG Xiaodong, E-mail: ;
    SONG Ye, Email:

摘要:

【目的/意义】 本论文旨在系统综述多源数据融合技术在苹果无损检测领域的应用进展,通过整合光谱、电子鼻、图像等多模态数据及融合策略,为苹果品质控制、病害检测及产业智能化升级提供理论与技术支撑。[进展]首先详细介绍了近红外光谱技术、高光谱成像技术、电子鼻技术、机器视觉技术和核磁共振技术五种主流无损检测技术,深入分析了各项技术的优势与适用场景。其次,重点剖析了数据级融合、特征级融合和决策级融合三种融合策略的技术原理与特点。在此基础上,全面阐述了多种数据融合技术的具体应用,包括光谱数据间的融合、光谱与电子鼻数据的融合以及机器视觉与光谱数据的融合。最后,结合苹果产业实际需求,详细论述了这些融合技术在苹果品质参数(如脆度、可溶性固形物含量)检测、缺陷与病害(如瘀伤、霉心病)识别、品种鉴别以及农药残留检测等关键场景中的创新应用进展。 【结论/展望】 多源数据融合技术能够显著提升苹果无损检测的准确性与可靠性,为苹果品质评价与质量控制提供了有效手段。然而,该技术仍面临数据异构性、模型复杂度高以及检测设备便携性差等挑战。未来研究应聚焦开发自动融合平台以简化操作,优化轻量化算法提升实时性,设计集成多种检测技术的一体化设备,提高便携性与稳定性,拓展至生长监测和保鲜等新应用场景。随着算法和硬件的协同创新,该技术将为苹果产业智能化提供重要支撑,以促进苹果产业的智能化发展。

关键词: 多源数据融合, 苹果, 无损检测, 品质评估, 病害诊断, 光谱, 电子鼻, 机器视觉

Abstract:

[Significance] Apple industry is a prominent agricultural sector that is of considerable importance global. Ensuring the highest standards of quality and safety is paramount for achieving consumer satisfaction. Non-destructive testing technologies have emerged as a powerful tool, enabling rapid and objective evaluation of fruit attributes. However, individual non-destructive testing technologies methods frequently possess inherent limitations, proving insufficient for comprehensive assessment. The synergistic application of multi-source data fusion technology in the non-destructive testing integrates information from multiple sensors to overcome the shortcomings of single-modality systems. The integration of disparate data streams constitutes the foundational technological framework that enables the advancement of apple quality control. This technological framework facilitates enhanced detection of defects and diseases, thereby contributing to the intelligent transformation of the apple industry value chain in its entirety. [Progress] This paper presents a systematic and comprehensive examination of recent advancements in multi-source data fusion for apple non-destructive testing. The principles, advantages, and typical application scenarios of five mainstream non-destructive testing technologies are first introduced: near-infrared (NIR) spectroscopy, particularly adept at quantifying internal chemical compositions such as soluble solids content (SSC) and firmness by analyzing molecular vibrations; hyperspectral imaging (HSI), which combines spectroscopy and imaging to provide both spatial and spectral information, making it ideal for visualizing the distribution of chemical components and identifying defects like bruises; electronic nose (E-nose) technology, a method for detecting unique patterns of volatile organic compounds (VOCs) to profile aroma and detect mold; machine vision, a process that analyzes external features such as color, size, shape, and texture for grading and surface defect identification; and nuclear magnetic resonance (NMR), a technique that provides detailed insights into internal structures and water content, useful for detecting internal defects like core rot. A critical evaluation of the fundamental methodologies in data fusion is conducted, with these methodologies categorized into three distinct levels. Data-level fusion entails the direct concatenation of raw data from homogeneous sensors or preprocessed heterogeneous sensors. This approach is straightforward, it can result in high dimensionality and is susceptible to issues related to data co-registration. Feature-level fusion, the most prevalent strategy, involves extracting salient features from each data source (e.g., spectral wavelengths, textural features, gas sensor responses) and subsequently combining these feature vectors prior to model training. This intermediate approach effectively reduces redundancy and noise, enhancing model robustness. Decision-level fusion operates at the highest level of abstraction, where independent models are trained for each data modality, and their outputs or predictions are integrated using algorithms such as weighted averaging, voting schemes, or fuzzy logic. This strategy offers maximum flexibility for integrating highly disparate data types. The paper also thoroughly elaborates on the practical implementation of these strategies, presenting case studies on the fusion of different spectral data (e.g., NIR and HSI), the integration of spectral and E-nose data for combined internal quality and aroma assessment, and the powerful combination of machine vision with spectral data for simultaneous evaluation of external appearance and internal composition. [Conclusions and Prospects] The integration of multi-source data fusion technology has driven significant advancements in the field of apple non-destructive testing. This progress has substantially improved the accuracy, reliability, and comprehensiveness of quality evaluation and control systems. By synergistically combining the strengths of different sensors, it enables a holistic assessment that is unattainable with any single technology. However, the field faces persistent challenges, including the effective management of data heterogeneity (i.e., varying scales, dimensions, and physical meanings), the high computational complexity of sophisticated fusion models, and the poor portability of current multi-sensor laboratory equipment—all of which hinder online industrial applications. Future research must prioritize several key areas. First, developing automated, user-friendly fusion platforms is imperative to simplify data processing and model deployment. Second, optimizing and developing lightweight algorithms (e.g., through model compression and knowledge distillation) is critical to enhancing real-time performance for high-throughput sorting lines. Third, creating compact, cost-effective, integrated hardware that combines multiple detection technologies into a single portable device will improve stability and accessibility. Additionally, new application frontiers should be explored, such as in-field monitoring of fruit maturation and predicting postharvest shelf life. The innovative integration of advanced algorithms and hardware holds the potential to provide substantial support for the intelligent and sustainable development of the global apple industry.

Key words: multi-source data fusion, apple, non-destructive detection, quality evaluation, disease diagnosis, spectrum, electronic nose, machine vision

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