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基于近红外光谱和高光谱成像技术的数据与图像特征融合快速预测掺假含量

Rapid Prediction of Adulteration Content in Based on Data and Image Features Fusions from Near-Infrared Spectroscopy and Hyperspectral Imaging Techniques.

作者信息

Jiang Zhiwei, Lv Aimin, Zhong Lingjiao, Yang Jingjing, Xu Xiaowei, Li Yuchan, Liu Yuchen, Fan Qiuju, Shao Qingsong, Zhang Ailian

机构信息

State Key Laboratory of Subtropical Silviculture, Zhejiang A&F University, Hangzhou 311300, China.

Zhejiang Provincial Key Laboratory of Resources Protection and Innovation of Traditional Chinese Medicine, Zhejiang A&F University, Hangzhou 311300, China.

出版信息

Foods. 2023 Jul 30;12(15):2904. doi: 10.3390/foods12152904.

Abstract

(AR) is an herb and food source with great economic, medicinal, and ecological value. (DC.) Koidz. (AC) and (Thunb.) DC. (AL) are its two botanical sources. The commercial fraud of AR adulterated with Koidz. ex Kitam (AJ) frequently occurs in pursuit of higher profit. To quickly determine the content of adulteration in AC and AL powder, two spectroscopic techniques, near-infrared spectroscopy (NIRS) and hyperspectral imaging (HSI), were introduced. The partial least squares regression (PLSR) algorithm was selected for predictive modeling of AR adulteration levels. Preprocessing and feature variable extraction were used to optimize the prediction model. Then data and image feature fusions were developed to obtain the best predictive model. The results showed that if only single-spectral techniques were considered, NIRS was more suitable for both tasks than HSI techniques. In addition, by comparing the models built after the data fusion of NIRS and HSI with those built by the single spectrum, we found that the mid-level fusion strategy obtained the best models in both tasks. On this basis, combined with the color-texture features, the prediction ability of the model was further optimized. Among them, for the adulteration level prediction task of AC, the best strategy was combining MLF data (at CARS level) and color-texture features (C-TF), at which time the R, RMSET, R, and RMSEP were 99.85%, 1.25%, 98.61%, and 5.06%, respectively. For AL, the best approach was combining MLF data (at SPA level) and C-TF, with the highest R (99.92%) and R (99.00%), as well as the lowest RMSET (1.16%) and RMSEP (2.16%). Therefore, combining data and image features from NIRS and HSI is a potential strategy to predict the adulteration content quickly, non-destructively, and accurately.

摘要

刺蒺藜是一种具有重大经济、药用和生态价值的草本植物及食物来源。(DC.) Koidz.(AC)和(Thunb.) DC.(AL)是其两个植物来源。为追求更高利润,常出现用Koidz. ex Kitam(AJ)掺假刺蒺藜的商业欺诈行为。为快速测定AC和AL粉末中的掺假物含量,引入了近红外光谱(NIRS)和高光谱成像(HSI)这两种光谱技术。选择偏最小二乘回归(PLSR)算法对刺蒺藜掺假水平进行预测建模。采用预处理和特征变量提取来优化预测模型。然后开展数据与图像特征融合以获得最佳预测模型。结果表明,若仅考虑单光谱技术,NIRS在这两项任务中比HSI技术更适用。此外,通过比较NIRS和HSI数据融合后构建的模型与单光谱构建的模型,发现中级融合策略在两项任务中均获得了最佳模型。在此基础上,结合颜色纹理特征,进一步优化了模型的预测能力。其中,对于AC的掺假水平预测任务,最佳策略是将MLF数据(在CARS水平)和颜色纹理特征(C-TF)相结合,此时R、RMSET、R和RMSEP分别为99.85%、1.25%、98.61%和5.06%。对于AL,最佳方法是将MLF数据(在SPA水平)和C-TF相结合,R最高(99.92%),R(99.00%),RMSET最低(1.16%),RMSEP最低(2.16%)。因此,结合NIRS和HSI的数据及图像特征是一种快速、无损且准确预测掺假物含量的潜在策略。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b2d2/10417609/05b05bfe492f/foods-12-02904-g001.jpg

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