Casting Product Image Data for Quality Inspection with Xception and Data Augmentation

Hao Hu, Shulin Li, Jiaxin Huang, Bo Liu, Change Che
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引用次数: 21

Abstract

Casting defects encompass a broad spectrum of imperfections, such as blow holes, pinholes, burrs, shrinkage defects, and various metallurgical anomalies. Detecting these defects manually requires a trained eye, and even the most diligent inspectors can inadvertently overlook subtle irregularities. To address these challenges, there is a growing movement toward automation in quality control. Deep learning models, including the Xception model, are being harnessed to create a robust classification system. Such models have the capacity to analyze thousands of product images with precision, identifying defects that may elude human inspectors. Furthermore, data augmentation techniques are applied to enhance the dataset, allowing the model to generalize more effectively and improve its defect recognition capabilities.
基于例外和数据增强的质量检测产品图像数据铸造
铸造缺陷包括广泛的缺陷,如吹孔、针孔、毛刺、收缩缺陷和各种冶金异常。手动检测这些缺陷需要训练有素的眼睛,即使是最勤奋的检查员也会不经意地忽略细微的不规则性。为了应对这些挑战,在质量控制方面出现了越来越多的自动化运动。包括exception模型在内的深度学习模型正被用来创建一个健壮的分类系统。这样的模型有能力精确地分析成千上万的产品图像,识别人类检查员可能无法识别的缺陷。此外,采用数据增强技术对数据集进行增强,使模型能够更有效地泛化,提高其缺陷识别能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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