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Identification of coffee bean varieties using hyperspectral imaging: influence of preprocessing methods and pixel-wise spectra analysis

机译:使用高光谱成像识别咖啡豆品种:预处理方法和逐像素光谱分析的影响

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摘要

Hyperspectral imaging was used to identify and to visualize the coffee bean varieties. Spectral preprocessing of pixel-wise spectra was conducted by different methods, including moving average smoothing (MA), wavelet transform (WT) and empirical mode decomposition (EMD). Meanwhile, spatial preprocessing of the gray-scale image at each wavelength was conducted by median filter (MF). Support vector machine (SVM) models using full sample average spectra and pixel-wise spectra, and the selected optimal wavelengths by second derivative spectra all achieved classification accuracy over 80%. Primarily, the SVM models using pixel-wise spectra were used to predict the sample average spectra, and these models obtained over 80% of the classification accuracy. Secondly, the SVM models using sample average spectra were used to predict pixel-wise spectra, but achieved with lower than 50% of classification accuracy. The results indicated that WT and EMD were suitable for pixel-wise spectra preprocessing. The use of pixel-wise spectra could extend the calibration set, and resulted in the good prediction results for pixel-wise spectra and sample average spectra. The overall results indicated the effectiveness of using spectral preprocessing and the adoption of pixel-wise spectra. The results provided an alternative way of data processing for applications of hyperspectral imaging in food industry.
机译:高光谱成像用于识别和可视化咖啡豆品种。通过不同方法对像素级光谱进行光谱预处理,包括移动平均平滑(MA),小波变换(WT)和经验模态分解(EMD)。同时,通过中值滤波器(MF)对每个波长的灰度图像进行空间预处理。使用完整样本平均光谱和逐像素光谱的支持向量机(SVM)模型,以及通过二阶导数光谱选择的最佳波长,均实现了80%以上的分类精度。首先,使用基于像素光谱的SVM模型来预测样品平均光谱,这些模型获得了80%以上的分类精度。其次,使用样本平均光谱的SVM模型用于预测逐像素光谱,但分类精度低于50%。结果表明,WT和EMD适用于像素级光谱预处理。逐像素光谱的使用可以扩展校准集,并为逐像素光谱和样本平均光谱带来良好的预测结果。总体结果表明使用光谱预处理和采用逐像素光谱的有效性。结果为高光谱成像在食品工业中的应用提供了另一种数据处理方式。

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