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首页> 外文期刊>Postharvest Biology and Technology >Early discrimination of mature-and immature-green tomatoes (Solanum lycopersicum L.) using fluorescence imaging method
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Early discrimination of mature-and immature-green tomatoes (Solanum lycopersicum L.) using fluorescence imaging method

机译:利用荧光成像方法早期辨别成熟和未成熟的绿色西红柿(Solanum Lycopersicum L.)

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Detecting mature-green and immature-green tomatoes using non-destructive approaches is a challenge for the fresh produce industry. Hyperspectral fluorescence imaging technique with excitation wavelength at 365 nm and UV-vis CCD camera was used for early non-destructive detection of mature-green and immature-green fruit from 200 randomly harvested green tomatoes. Conventional destructive analysis regarding locule gel development and seed texture were assessed to assign the maturity stage of the fruit. In addition soluble solid content (SSC), pH, total acidity (TA), and color were measured, on the training set and on the prediction set, in this case also after 10 d of storage. Fluorescence intensity at the surface of immature-green fruit was higher in the red region (690 nm) than that of mature-green fruit, suggesting that hyperspectral fluorescence imaging can be an effective classification tool. A univariate classification method was used to distinguish mature-green and immature-green tomatoes based on the grey scale values extracted from fluorescence imaging, with a non-error rate of 96 % in calibration and 100 % in external prediction. Hence, a non-destructive method for the early distinction of mature-green from immature-green tomatoes is available.
机译:使用非破坏性方法检测成熟 - 绿色和未成熟的绿色西红柿是新鲜农产品行业的挑战。高光谱荧光成像技术在365nm和UV-VIS CCD相机中使用激发波长和UV-VIS CCD摄像机的早期非破坏性检测从200个随机收获的绿色西红柿的成熟绿色和未成熟的绿色果实。评估了关于小凝胶发育和种子纹理的常规破坏性分析,以分配水果的成熟阶段。另外,在训练集和预测集上测量可溶性固体含量(SSC),pH,总酸度(TA)和颜色,在这种情况下,在10 d储存之后也是如此。在红地区(690nm)的荧光强度高于成熟 - 绿色果实的荧光强度,表明高光谱荧光成像可以是有效的分类工具。使用单变量分类方法基于从荧光成像提取的灰度值来区分成熟 - 绿色和未成熟的绿色西红柿,校准中的非误差率为96%,外部预测100%。因此,可以获得来自未成熟绿色西红柿的成熟绿色早期区别的非破坏性方法。

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