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首页> 外文期刊>Applied Spectroscopy: Society for Applied Spectroscopy >Noninvasive Determination of Firmness and Dry Matter Content of Stored Onion Bulbs Using Shortwave Infrared Imaging with Whole Spectra and Selected Wavelengths
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Noninvasive Determination of Firmness and Dry Matter Content of Stored Onion Bulbs Using Shortwave Infrared Imaging with Whole Spectra and Selected Wavelengths

机译:使用短波红外成像与整个光谱和选定波长的储存洋葱灯泡的坚固和干物质含量的非侵入性测定

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A firm texture of dry onions is important for consumer acceptance. Both the texture and dry matter content decline during storage, influencing the market value of onions. The main goal of this study was to develop predictive models that in future might form the basis for automated sorting of onions for firmness and dry matter content in the industry. Hyperspectral scanning was conducted in reflectance mode for six commercial batches of onions that were monitored three times during storage. Mean spectra from the region of interest were extracted and partial least squares regression (PLSR) models were constructed. Feature wavelengths were identified using variable selection techniques resulting from interval partial least squares and recursive partial least squares analyses. The PLSR model for firmness gave a root mean square error of cross-validation (RMSECV) of 0.84?N, and a root mean square error of prediction (RMSEP) of 0.73?N, with coefficients of determination ( R ~(2)) of 0.72 and 0.83, respectively. The RMSECV and RMSEP of the PLSR model for dry matter content were 0.10% and 0.08%, respectively, with a R ~(2)of 0.58 and 0.79, respectively. The whole wavelength range and selected wavelengths showed nearly similar results for both dry matter content and firmness. The results obtained from this study clearly reveal that hyperspectral imaging of onion bulbs with selected wavelengths, coupled with chemometric modeling, can be used for the noninvasive determination of the firmness and dry matter content of stored onion bulbs.
机译:干洋葱的坚固质地对于消费者验收是重要的。储存过程中的质地和干物质含量都下降,影响洋葱的市场价值。本研究的主要目标是开发预测模型,将来可能构成自动分类洋葱的基础,用于行业中的坚定性和干物质含量。高光谱扫描以反射模式进行,用于六个商业批次的洋葱,在储存期间监测三次。提取来自感兴趣区域的平均光谱,构建了局部最小二乘次数(PLSR)模型。使用由间隔部分最小二乘和递归部分最小二乘分析产生的可变选择技术来识别特征波长。用于坚固性的PLSR模型给出了0.84Ω·n的交叉验证(RMSECV)的根均方误差,以及0.73Ω的预测(RMSEP)的根均方误差,系数(R〜(2))分别为0.72和0.83。 PLSR模型的干物质含量的RMSECV和RMSEP分别为0.10%和0.08%,分别为0.58和0.79的R〜(2)。整个波长范围和所选波长显示出干物质含量和坚固性的几乎类似的结果。本研究获得的结果清楚地表明,洋葱灯泡的高光谱成像具有选定波长的洋葱灯泡,与化学计量建模相结合,可用于非侵入性测定储存的洋葱灯泡的硬质和干物质含量。

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