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首页> 外文期刊>Australian Journal of Grape and Wine Research >On-the-go hyperspectral imaging for the in-field estimation of grape berry soluble solids and anthocyanin concentration
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On-the-go hyperspectral imaging for the in-field estimation of grape berry soluble solids and anthocyanin concentration

机译:实时高光谱成像,用于现场评估葡萄浆果中的可溶性固体和花色苷浓度

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Background and Aims Hyperspectral imaging (HSI) is used to assess fruit composition mostly indoor under controlled conditions. This work evaluates a HSI technique to measure TSS and anthocyanin concentration in wine grapes non-destructively, in real time and in the vineyard. Methods and Results Hyperspectral images were acquired under natural illumination with a VIS-NIR hyperspectral camera (400-1000 nm) mounted on an all-terrain vehicle moving at 5 km/h in a commercial Tempranillo vineyard in La Rioja, Spain. Measurements were taken on four dates during grape ripening in 2017. Grape composition was analysed on the grapes imaged, which was then used to develop spectral models, trained with support vector machines, to predict TSS and anthocyanin concentration. Regression models of TSS had determination coefficients (R-2) of 0.91 for a fivefold cross validation [root mean squared error (RMSE) of 1.358 degrees Brix] and 0.92 for the prediction of external samples (RMSE of 1.274 degrees Brix). For anthocyanin concentration, R-2 of 0.72 for cross validation (RMSE of 0.282 mg/g berry) and 0.83 for prediction (RMSE of 0.211 mg/g berry) was achieved. Spatial-temporal variation maps were developed for the four image acquisition dates during ripening. Conclusions These results suggest that potential for on-the-go HSI to automate the assessment of important grape compositional parameters in vineyard is promising. Significance of the Study The on-the-go HSI method described in this study could be automated and provide valuable information to improve winery and vineyard decisions and vineyard management.
机译:背景和目的高光谱成像(HSI)用于评估在受控条件下大部分室内的水果成分。这项工作评估了一种HSI技术,可以实时,无损地测量酿酒葡萄中TSS和花色苷的浓度。方法和结果高光谱图像是使用VIS-NIR高光谱相机(400-1000 nm)在自然光照下采集的,该相机安装在西班牙拉里奥哈的Tempranillo商业葡萄园中,以5 km / h的速度行驶的全地形车上。在2017年葡萄成熟期间的四个日期进行了测量。在成像的葡萄上分析了葡萄的成分,然后将其用于建立光谱模型,并用支持向量机进行训练,以预测TSS和花色苷浓度。对于五重交叉验证[均方根误差(RMSE)为1.358度白利糖度],TSS回归模型的测定系数(R-2)为0.91,对于外部样品的预测(RMSE为1.274度白利糖度),测定系数(R-2)为0.92。对于花色苷浓度,交叉验证的R-2为0.72(浆果的RMSE为0.282 mg / g),预测的R-2为0.83(浆果的RMSE为0.211 mg / g)。在成熟期间针对四个图像采集日期开发了时空变化图。结论这些结果表明,进行中的恒生指数自动评估葡萄园中重要葡萄成分参数的潜力是有希望的。研究的意义本研究中描述的移动HSI方法可以实现自动化,并提供有价值的信息,以改善酿酒厂和葡萄园的决策以及葡萄园管理。

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