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Decision Rules for Computer-Vision Quality Classification of Wine Natural Cork Stoppers

机译:葡萄酒天然软木塞的计算机视觉质量分类决策规则

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Image-analysis techniques were applied to the surface of wine cork stoppers (tops and bodies) of the standard seven commercial quality classes to characterize their porosity. Canonical discriminant analysis (CDA) and stepwise discriminant analysis (SDA) were used to differentiate quality class and to identify the best features to select these classes. The accuracy of classification using CDA functions was on average greater than 50% for the seven commercial classes and was greater than 67% for a simplified three-grade classification. Based on the independent variables of the first CDA function determined by the stepwise method, a set of features was selected for use in decision rules for cork stopper classification: porosity coefficient and maximum pore dimensions (length and area) for bodies and porosity coefficient and number of pores for tops. Threshold limits for each feature were established for each quality class and a classification algorithm was applied. Results showed an overall match in class yield of 86% and better class homogeneity and separation. These are proposed as a foundation for future standardization of cork stopper classification based on image analysis and computerized vision systems selection of quantified features to ensure uniformity and transparency in trade while maintaining the overall economical feasibility in industrial processing.
机译:将图像分析技术应用于标准七个商业质量级别的葡萄酒软木塞塞(顶部和底部)的表面,以表征其孔隙度。规范判别分析(CDA)和逐步判别分析(SDA)用于区分质量等级并确定最佳特征以选择这些等级。对于七个商业类别,使用CDA函数进行分类的准确性平均高于50%,对于简化的三级分类,其准确性高于67%。基于逐步方法确定的第一个CDA函数的自变量,选择了一组特征用于软木塞分类的决策规则:孔隙率系数和物体的最大孔隙尺寸(长度和面积)以及孔隙率系数和数量毛孔的顶部。为每个质量等级建立每个特征的阈值限制,并应用分类算法。结果显示,班级总收率达到86%,班级同质性和分离度更高。这些被提议作为将来基于图像分析和计算机视觉系统选择量化特征的软木塞分类标准的基础,以确保贸易的统一性和透明度,同时保持工业加工的总体经济可行性。

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