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Nondestructive internal quality inspection of pear fruit by X-ray CT using machine learning

机译:X射线CT使用机器学习的无损内部质量检验

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摘要

To preserve the quality of fresh pear fruit after harvest and deliver quality fruit year-round a controlled supply chain and long-term storage are applied. During storage, however, internal disorders can develop due to suboptimal storage conditions that may not cause externally visible symptoms. This makes them impossible to be detected by current commercial quality grading systems in a reliable and non-destructive way. A combination of a Support Vector Machine coupled with a feature extraction algorithm and X-ray Computed Tomography is proposed to successfully detect internal disorders in 'Conference' and 'Cepuna' pear fruit nondestructively. Classifiers were able to distinguish defective from sound fruit with classification accuracies ranging between 90.2 and 95.1% depending on the cultivar and number of used features. Moreover, low false positive and negative rates were obtained, respectively ranging between 0.0 and 6.7%, and 5.7 and 13.3%. Classifiers trained on 'Conference' data were transferred effectively to the 'Cepuna' cultivar, suggesting generalizability to other cultivars as well. With continuing developments in both hardware and software to increase inspection speed and reduce equipment costs, the method can be implemented in industrial applications, e.g., inline translational X-ray CT.
机译:在收获后保留新鲜梨果的质量,全年提供优质水果,应用受控供应链和长期储存。然而,在储存期间,由于次优储存条件可能不会导致外部可见症状,内部疾病可以发展。这使得它们无法以可靠而无损的方式被当前商业质量分级系统检测到的。提出了一种与特征提取算法和X射线计算机断层扫描的支持向量机的组合,以便无损地检测“会议”和“Cepuna”梨果中的内部障碍。分类器能够区分从声音果实的缺陷,分类精度范围在90.2和95.1%之间,具体取决于使用的使用特征的品种和数量。此外,获得低误阳性和负率,分别为0.0至6.7%,5.7%和13.3%。在“会议”数据上培训的分类器有效地转移到“Cepuna”品种,表明其他品种的概括。在硬件和软件中继续开发,以提高检查速度和降低设备成本,可以在工业应用中实现该方法,例如,内联的翻译X射线CT。

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