Cumbajin Esteban, Rodrigues Nuno, Costa Paulo, Miragaia Rolando, Frazão Luís, Costa Nuno, Fernández-Caballero Antonio, Carneiro Jorge, Buruberri Leire H, Pereira António
Computer Science and Communications Research Centre, School of Technology and Management, Polytechnic of Leiria, 2411-901 Leiria, Portugal.
Instituto de Investigación en Informática de Albacete, 02071 Albacete, Spain.
Sensors (Basel). 2023 Dec 31;24(1):232. doi: 10.3390/s24010232.
Defect detection is a key element of quality control in today's industries, and the process requires the incorporation of automated methods, including image sensors, to detect any potential defects that may occur during the manufacturing process. While there are various methods that can be used for inspecting surfaces, such as those of metal and building materials, there are only a limited number of techniques that are specifically designed to analyze specialized surfaces, such as ceramics, which can potentially reveal distinctive anomalies or characteristics that require a more precise and focused approach. This article describes a study and proposes an extended solution for defect detection on ceramic pieces within an industrial environment, utilizing a computer vision system with deep learning models. The solution includes an image acquisition process and a labeling platform to create training datasets, as well as an image preprocessing technique, to feed a machine learning algorithm based on convolutional neural networks (CNNs) capable of running in real time within a manufacturing environment. The developed solution was implemented and evaluated at a leading Portuguese company that specializes in the manufacturing of tableware and fine stoneware. The collaboration between the research team and the company resulted in the development of an automated and effective system for detecting defects in ceramic pieces, achieving an accuracy of 98.00% and an F1-Score of 97.29%.
缺陷检测是当今工业质量控制的关键要素,该过程需要采用包括图像传感器在内的自动化方法,以检测制造过程中可能出现的任何潜在缺陷。虽然有多种方法可用于检查金属和建筑材料等表面,但专门用于分析陶瓷等特殊表面的技术数量有限,陶瓷表面可能会呈现出独特的异常或特征,这需要更精确和有针对性的方法。本文描述了一项研究,并提出了一种在工业环境中对陶瓷件进行缺陷检测的扩展解决方案,该方案利用带有深度学习模型的计算机视觉系统。该解决方案包括图像采集过程和用于创建训练数据集的标注平台,以及一种图像预处理技术,用于为基于卷积神经网络(CNN)的机器学习算法提供数据,该算法能够在制造环境中实时运行。所开发的解决方案在一家专门生产餐具和高档炻器的葡萄牙领先公司中得到实施和评估。研究团队与该公司的合作开发出了一种用于检测陶瓷件缺陷的自动化且有效的系统,准确率达到98.00%,F1分数为97.29%。