首页> 美国卫生研究院文献>Sensors (Basel Switzerland) >Application of Convolutional Neural Network-Based Feature Extraction and Data Fusion for Geographical Origin Identification of Radix Astragali by Visible/Short-Wave Near-Infrared and Near Infrared Hyperspectral Imaging
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Application of Convolutional Neural Network-Based Feature Extraction and Data Fusion for Geographical Origin Identification of Radix Astragali by Visible/Short-Wave Near-Infrared and Near Infrared Hyperspectral Imaging

机译:基于神经网络的应用基于神经网络的特征提取和数据融合来通过可见/短波近红外线和近红外高光谱成像进行地理原产地对地域原产地识别

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摘要

Radix Astragali is a prized traditional Chinese functional food that is used for both medicine and food purposes, with various benefits such as immunomodulation, anti-tumor, and anti-oxidation. The geographical origin of Radix Astragali has a significant impact on its quality attributes. Determining the geographical origins of Radix Astragali is essential for quality evaluation. Hyperspectral imaging covering the visible/short-wave near-infrared range (Vis-NIR, 380–1030 nm) and near-infrared range (NIR, 874–1734 nm) were applied to identify Radix Astragali from five different geographical origins. Principal component analysis (PCA) was utilized to form score images to achieve preliminary qualitative identification. PCA and convolutional neural network (CNN) were used for feature extraction. Measurement-level fusion and feature-level fusion were performed on the original spectra at different spectral ranges and the corresponding features. Support vector machine (SVM), logistic regression (LR), and CNN models based on full wavelengths, extracted features, and fusion datasets were established with excellent results; all the models obtained an accuracy of over 98% for different datasets. The results illustrate that hyperspectral imaging combined with CNN and fusion strategy could be an effective method for origin identification of Radix Astragali.
机译:Astragali adraix Astragali是一种珍贵的传统中文功能食品,用于药物和食品目的,具有免疫调节,抗肿瘤和抗氧化等各种益处。 Astragali的地理来源对其质量属性产生了重大影响。确定黄芪的地理起源对于质量评估至关重要。覆盖可见/短波近红外范围(Vis-Nir,380-1030nm)和近红外范围(NIR,874-1734nm)的高光谱成像被应用于从五种不同的地理起源中鉴定Cread Astragali。主要成分分析(PCA)用于形成分数图像以实现初步定性识别。 PCA和卷积神经网络(CNN)用于特征提取。在不同光谱范围和相应的特征处对原始光谱进行测量级融合和特征级融合。支持矢量机(SVM),基于全波长,提取的功能和融合数据集的逻辑回归(LR)和CNN模型,具有优异的结果;所有模型可以获得不同数据集的精度超过98%。结果说明,高光谱成像与CNN和融合策略相结合,可以是用于原产地识别的有效方法Astragali。

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