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A method for classifying tube structures based on shape descriptors and a random forest classifier

机译:基于形状描述仪和随机林分类的管结构分类方法

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摘要

Machine-vision-based tube measurement is characterized by its accuracy, level of automation, noncontact nature and reliability. However, it cannot classify tube structures automatically. Commercial systems and previous algorithms cannot measure branch tubes due to difficulties of classifying tube structures. Therefore, this paper proposes a method for classifying tube structures. Multiple shape descriptors are used to extract tube structure features. Furthermore, RF classifier is used to distinguish among tube structures after tube features extraction. For efficient and accurate classification, the relative importance of each feature is calculated. Compared to results of ResNet-18 training on tube structures dataset, the precision of proposed method achieves 94% while the other is only 88%; experiments shows good performance on Recall and F-score. We developed a software to verify the method on the basis of the multi-view vision system built by our group, which can rapidly and automatically classify numerous complex tube structures used in engineering field. (C) 2020 Published by Elsevier Ltd.
机译:基于机器视觉的管测量的特点是其准确性,自动化水平,非接触性质和可靠性。但是,它无法自动对管结构进行分类。由于分类管结构的困难,商业系统和先前的算法不能测量分支管。因此,本文提出了一种用于对管结构进行分类的方法。多种形状描述符用于提取管结构特征。此外,RF分类器用于在管特征提取之后区分管结构。为了进行高效和准确的分类,计算每个功能的相对重要性。与Reset-18训练的结果相比管结构数据集,所提出的方法的精度达到94%,而另一个仅为88%;实验表明召回和F分的良好表现。我们开发了一种软件,可根据我们的组构建的多视觉视觉系统验证该方法,该系统可以快速且自动分类工程领域中使用的许多复杂管结构。 (c)2020年由elestvier有限公司发布

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