Metal Defect Classification Using Deep Learning

Aji Teguh Prihatno, Ida Bagus Krishna Yoga Utama, J. Kim, Y. Jang
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引用次数: 2

Abstract

In the era of Industry 4.0, the vast development of Smart Factory is always followed by the advancement of Deep Learning technology. To avoid the smart factory system from unwanted losses because of defects in its output production in the steel factory, defect classification on steel sheets based on Deep Learning should be developed precisely. This paper explains how the Deep Learning technique was used to implement defect detection in a smart factory. For this study, we used an open dataset of steel defects. The result of the Deep Learning method for the defect detection system generates 96% accuracy, 0.95 recall, and a precision of 0.97 on the training process. This research goal may contribute to enhancing efficiency and cost reduction in the smart steel factory environment.
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基于深度学习的金属缺陷分类
在工业4.0时代,智能工厂的巨大发展始终伴随着深度学习技术的进步。为了避免智能工厂系统在炼钢厂的产出生产中出现缺陷而造成不必要的损失,需要精确地开发基于深度学习的钢板缺陷分类技术。本文解释了如何使用深度学习技术在智能工厂中实现缺陷检测。在这项研究中,我们使用了一个开放的钢缺陷数据集。缺陷检测系统的深度学习方法在训练过程中产生96%的准确率,0.95的召回率和0.97的精度。这一研究目标可能有助于在智能钢铁厂环境中提高效率和降低成本。
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