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Agreement Between Visual and Model-Based Classification of Tomato Fruit Ripening

机译:基于模型番茄果实成熟的基于模型分类的协议

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Traditionally, the ripening stage of tomato fruit is determined by the observed percentage of red color on the fruit surface based on color charts provided by USDA standards. However, multiple observers can assign different ripening stages to the sametomato fruit due to subjectivity and/or inaccurate evaluations. This practical challenge has not been extensively discussed in the literature, so we assessed the degree of agreement between human visual classification and model-based prediction using physicochemical properties such as color (L*, a*, b*, hue, and chroma), firmness, and carotenoid contents. In our exploratory data analyses, we clearly observed increasing a* and decreasing L*, hue, and firmness with respect to ripening stage, but the rateof change seemed different from cultivar to cultivar. To assess the degree of agreement, cross-validations were used to compare thirty linear regression models with various combinations of the predictors. The cross-validations indicated that predictionsfrom a cultivar-specific model agreed well with human visual classifications. When the cultivar-specific model was considered with the color indices, we achieved up to 95.5% accuracy. When firmness, lycopene, and beta-carotene were added to the model, the accuracy increased to 96.8%. These results suggest the reliability of non-destructive methods for auto-sorting systems.
机译:传统上,番茄果实的成熟阶段由果实表面上观察到的红色百分比基于USDA标准提供的彩色图表来确定。然而,由于主观性和/或不准确的评估,多种观察者可以将不同的成熟阶段分配给Sametomato果实。这种实际挑战在文献中尚未广泛讨论,因此我们使用诸如颜色(L *,A *,B *,色调和色调)的物理化学性质来评估人类视觉分类和基于模型的预测之间的一致性程度,坚定性和类胡萝卜素内容。在我们的探索性数据分析中,我们清楚地观察到逐渐增加了一个*,色调和硬度,但变化率似乎与品种不同。为了评估协议程度,使用交叉验证来比较具有预测器的各种组合的三十个线性回归模型。交叉验证表明,预测从品种特定模型与人类视觉分类相同。当用颜色指数考虑品种特异性模型时,我们的准确性高达95.5%。当添加到模型中的坚固性,番茄红素和β-胡萝卜素时,精度增加到96.8%。这些结果表明了自动排序系统的非破坏性方法的可靠性。

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