自动化制造过程控制中图像分析的深度CNN

M. Kadar, Daniela Onita
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引用次数: 6

摘要

计算机视觉广泛应用于制造过程的控制。然而,由于成本相对较高,自动化目视检测只应用于最终产品,而不是在每个生产阶段之后。缺陷产品是在生产管道的末端被识别出来的,关于产生缺陷产品的原因和生产阶段提供的信息很少。本文提出了一个深度CNN,通过提供关于产品类型的附加信息,从而分别提供产生该产品和故障的生产阶段的附加信息,来增强计算机视觉系统。CNN已集成到管道中,用于自动化过程控制。这些信息对于生产流程管理中的进一步决策非常重要。本文对深度CNN模型设计进行了全面的描述,并讨论了基于图像分析的深度CNN模型设计,该图像分析是在12k的陶瓷行业产品图像数据库上进行的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A deep CNN for Image Analytics in Automated Manufacturing Process Control
Computer vision is widely used in control of manufacturing processes. However, due to the relatively high costs, automated visual inspection is applied only for the final product and not after each production phase. Faulty products are identified at the end of the production pipeline, little information is provided with regard the causes and the production phase that produced the defect products. This paper presents a deep CNN for the enhancement of the computer vision system by providing additional information on the type of the product and consequently on the production phase that generated that product, and fault, respectively. The CNN has been integrated into the pipeline for the automated process control. This information is important for further decision makings in production flow management. The paper presents full description of the deep CNN model design with discussions based on image analytics carried out on 12k database of images of products from the porcelain industry.
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