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首页> 外文期刊>Transactions of the ASABE >Predicting Apple Firmness and Soluble Solids Content Based on Hyperspectral Scattering Imaging Using Fourier Series Expansion
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Predicting Apple Firmness and Soluble Solids Content Based on Hyperspectral Scattering Imaging Using Fourier Series Expansion

机译:使用傅立叶串联膨胀,基于高光谱散射成像预测苹果的坚固性和可溶性固体含量

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This article reports on using a Fourier series expansion method to extract features from hyperspectral scattering profiles for apple fruit firmness and soluble solids content (SSC) prediction. Hyperspectral scattering images of ‘Golden Delicious ’ (GD), ‘Jonagold’ (JG), and ‘Delicious ’ (RD) apples, harvested in 2009 and 2010, were acquired using an online hyperspectral imaging system over the wavelength region of 500 to 1000 nm. The moment method and Fourier series expansion method were used to analyze the scattering profiles of apples. The zeroth-first order moment (Z-FOM) spectra and Fourier coefficients were extracted from each apple, which were then usedfor developing fruit firmness and SSC prediction models using partial least squares (PLS) and least squares support vector machine (LSSVM). The PLS models based on the Fourier coefficients improved the standard errors of prediction (SEP) by 4.8% to 19.9%> for firmness and by 2.4% to 13.5% for SSC, compared with the PLS models using the Z-FOM spectra. The LSSVM models for the prediction set of Fourier coefficients achieved better SEP results, with improvements of 4.4%, to 11.3% for firmness and 2.8%, to 16.5%, for SSC over the LSSVM models for the Z-FOM spectra data and 3.7%, to 12.6%, for firmness and 5.4%, to 8.6% for SSC over the PLS models for the Fourier coefficients. Experiments showed that Fourier series expansion provides a simple, fast, and effective means for improving hyperspectral scattering prediction offruit internal quality when used with either PLS or LSSVM.
机译:本文报告了使用傅里叶级展开方法提取来自苹果果实的高光谱散射曲线的特征,以及可溶性固体含量(SSC)预测。 2009年和2010年收获的“金色美味”(GD),'Jonagold'(JG)和“美味”(RD)苹果的高光谱散射图像,并在2009年和2010年收获,在500至1000的波长区域上使用在线高光谱成像系统获得nm。该矩方法和傅立叶串联扩展方法用于分析苹果的散射轮廓。从每个苹果中提取Zeroth-1订单时刻(Z-FOM)光谱和傅里叶系数,然后使用部分最小二乘(PLS)和最小二乘支持向量机(LSSVM)显影果实固态和SSC预测模型。与使用Z-FOM光谱的PLS型号相比,基于傅立叶系数的PLS模型将预测(SEP)的标准误差提高了4.8%至19.9%的4.8%至19.9%。用于预测傅立叶系数的LSSVM模型实现了更好的SEP结果,提高了4.4%,对于Z-FOM谱数据的LSSVM模型,SSC为3.4%,达到11.3%至16.5%。对于傅立叶系数的PLS型号,为4.6%,适用于强硬度和5.4%,对于SSC而言,SSC为8.6%。实验表明,傅立叶系列扩展提供了一种简单,快速,有效的方法,用于改善与PLS或LSSVM一起使用时的高光谱散射预测内部质量。

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