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Parametric Model of Pipe Defect Description for Generation of Training Set for Machine Learning in Data-Poor Conditions

机译:数据匮乏条件下用于机器学习的训练集生成的管道缺陷描述参数模型

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The article addresses the problem of the lack of real data in training and testing of machine learning algorithms. The issue is presented below through the case of identifying the defect on the pipe inner surface. In this paper, the authors present approaches to the formation of a training set using synthetic images obtained from various sources. The article considers in detail the method of image generation based on the recommended parametric representation of the defect on the inner surface of a pipe. For the defect description, the following parameters were selected: area coefficient, HSV color model, texture, shape and boundary of the defect. The determination of each of the selected parameters is described in the paper. The experimental results on the synthetic image generation based on parametric representation of the defect using the developed software in the Matlab environment are noted. The article considers the method of detecting defects on the inner surface of the pipe using the presented defect parametric description. Based on the developed model, there was formed a sample of tube images for the neural network training and testing.
机译:本文解决了在机器学习算法的训练和测试中缺少真实数据的问题。下面通过识别管道内表面的缺陷来介绍此问题。在本文中,作者介绍了使用从各种来源获得的合成图像来形成训练集的方法。本文根据推荐的管道内表面缺陷的参数表示法,详细考虑了图像生成方法。为了描述缺陷,选择了以下参数:面积系数,HSV颜色模型,纹理,缺陷的形状和边界。本文介绍了每个选定参数的确定。记录了在Matlab环境中使用开发的软件基于缺陷的参数表示生成合成图像的实验结果。本文考虑了使用提出的缺陷参数描述来检测管道内表面缺陷的方法。基于开发的模型,形成了用于神经网络训练和测试的管图像样本。

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