食品科学 ›› 2026, Vol. 47 ›› Issue (6): 342-350.doi: 10.7506/spkx1002-6630-20250926-218

• 安全检测 • 上一篇    

基于高光谱成像与深度学习融合技术的桑黄产地溯源和栽培模式识别

史婉荣,沈书玥,王沁,李正鹏,李婷婷   

  1. (1.上海理工大学健康科学与工程学院,上海 200093;2.上海健康医学院医学技术学院,上海 201318;3.上海中医药大学研究生院,上海 201203;4.上海市农业科学院食用菌研究所,国家食用菌工程技术研究中心,上海 201403)
  • 发布日期:2026-04-14
  • 基金资助:
    上海市东方英才青年项目;上海市科委扬帆计划项目(21YF1418900)

Origin Traceability and Cultivation Mode Identification of Phellinus linteus Based on Hyperspectral Imaging Combined with Deep Learning

SHI Wanrong, SHEN Shuyue, WANG Qin, LI Zhengpeng, LI Tingting   

  1. (1. School of Health Science and Engineering, University of Shanghai for Science and Technology, Shanghai 200093, China; 2. The College of Medical Technology, Shanghai University of Medicine & Health Sciences, Shanghai 201318, China; 3. Graduate School, Shanghai University of Traditional Chinese Medicine, Shanghai 201203, China; 4. National Engineering Research Center of Edible Fungi, Institute of Edible Fungi, Shanghai Academy of Agricultural Sciences, Shanghai 201403, China)
  • Published:2026-04-14

摘要: 为实现对桑黄样品的快速、无损、准确溯源,本研究通过对比可见-近红外(400~1 000 nm)和短波红外(900~1 700 nm)范围内高光谱成像技术,结合深度学习算法,构建了一种快速鉴别桑黄产地来源及栽培模式模型。通过比较6 种预处理方法(一阶导数、二阶导数、多元散射校正(multiplicative scatter correction,MSC)、标准正态变量变换(standard normal variate,SNV)、Savitzky-Golay平滑、去趋势)、3 种特征选择算法(连续投影算法、竞争性自适应重加权算法、无信息变量消除(uninformative variable elimination,UVE)算法)和3 种深度学习算法(卷积神经网络(convolutional neural network,CNN)、反向传播神经网络、径向基函数神经网络)确立最优算法组合。结果表明,在双波段性能对比中,短波红外波段的鉴别精度显著优于可见-近红外波段;3 种深度学习算法中,CNN模型的分类能力最优。具体而言,针对桑黄产地溯源任务,900~1 700 nm波段下的SNV-UVE-CNN模型表现最佳,测试集分类准确率达99.36%;针对栽培模式识别,900~1 700 nm波段下的MSC-CNN模型性能最优,测试集准确率为97.44%。此外,本研究采用t-分布随机邻域嵌入算法对模型提取的深层特征进行可视化分析,通过对比双波段高光谱成像技术,筛选最适深度学习算法,实现了对桑黄产地来源与栽培模式的精准识别,明确了900~1 700 nm波段的应用优势及CNN模型的适用性,本研究可为构建智能化快速检测技术体系及推动便携式检测装备的研发与应用提供重要的理论基础与数据支撑。

关键词: 桑黄;高光谱成像;产地溯源;栽培模式识别;卷积神经网络

Abstract: To achieve rapid, non-destructive, and accurate traceability of Phellinus linteus samples, this study compared the application of dual-band hyperspectral imaging in the visible-near-infrared (400-1 000 nm) and short-wave infrared (900-1 700 nm) regions combined with deep learning algorithms to construct a model for rapid identification of the origin and cultivation mode of P. linteus. Six preprocessing techniques were compared, including first derivative, second derivative, multiplicative scatter correction (MSC), standard normal variate (SNV), Savitzky-Golay smoothing, and detrending, along with three feature selection algorithms: successive projections algorithm (SPA), competitive adaptive reweighted sampling (CARS), and uninformative variables elimination (UVE), as well as three deep learning algorithms: convolutional neural network (CNN), back propagation neural network (BPNN), and radial basis function neural network (RBFNN). The optimal algorithm combination was determined through these comparisons. The results showed that the short-wave infrared band provided significantly higher identification accuracy than the visible-near infrared band. Among the three deep learning algorithms, the CNN model demonstrated the best classification capacity. Specifically, for P. linteus origin traceability, the SNV-UVE-CNN model in the 900–1 700 nm range exhibited the best performance, with a classification accuracy of 99.36% on the test set. For cultivation mode recognition, the MSC-CNN model in the 900–1 700 nm range performed optimally, with a classification accuracy of 97.44% on the test set. Additionally, t-distributed stochastic neighbor embedding (t-SNE) was employed to visualize the deep features extracted by the model. The findings demonstrated the advantages of the 900–1 700 nm spectral range and confirmed the suitability of the CNN model for the identification of the origin and cultivation mode of P. linteus. This study provides a pivotal theoretical foundation and essential data support for the development of intelligent rapid detection systems and the advancement of portable detection technologies.

Key words: Phellinus linteus; hyperspectral imaging; origin traceability; cultivation mode identification; convolutional neural network

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