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Machine-learning-based Quality-level-estimation System for Inspecting Steel Microstructures

机译:基于机器学习的质量级估算系统,用于检查钢微观结构

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摘要

For quality control of special steels, the microstructure of the steel is visually inspected on the basis of microscopic images. In this study, aiming to eliminate the effect of personal differences between inspectors and reduce inspection costs, a system for automatically estimating quality level (hereafter, “automatic-quality-level-estimation system ‘’) based on machine learning is proposed and evaluated. Collecting the images is a manual task performed by the inspector, and it is difficult to prepare multiple training samples in advance. As for the proposed method, overfitting, which is a problem in training with few samples, is suppressed by data expansion based on variation distribution of correct-answer values. The correct-answer rate for judging quality level by an inspector was about 90%, while the proposed method achieved a rate of 90%, which is sufficient to render the method practically applicable.
机译:对于特殊钢的质量控制,基于微观图像目视检查钢的微观结构。 在本研究中,旨在消除检查员之间个人差异的影响,并提出了一种基于机器学习的自动估算质量水平的系统(以下,“自动质量级估计系统”)。 收集图像是由检查器执行的手动任务,并且难以提前准备多个培训样本。 对于所提出的方法,基于正确答案值的变化分布,通过数据扩展抑制了过度装备,这是训练中的训练中的问题。 通过检查员判断质量水平的正确答案率约为90%,而所提出的方法实现了90%的速率,这足以使该方法实际上是适用的。

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