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A Deep Learning-Based Approach for Quality Control and Defect Detection for Industrial Bagging Systems

机译:基于深入的学习方法,用于工业袋系统的质量控制和缺陷检测

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In the competitive world of the food industry where companies have to offer quality products, quality control is essential. However, it could become expensive, especially if it is a manual process. Its automation then becomes an excellent opportunity for a company. The objective of this research is to find out whether it is possible to carry out quality control of open mouth bag sealings on industrial bagging systems using deep learning. In this paper, we propose a three-step approach: data collection, data classification, and supervised classification learning. The first step is to collect images of sealings of open mouth bags. We created a line-scan based prototype and placed it on a production line to harvest a large amount of data. Image processing is then applied to clean the data. The next step is the classification of the data to identify classes of defects and labeling of these data. Finally, supervised classification learning makes it possible to implement quality control. We propose an architecture based on convolutional neural networks for image classification of open mouth bags. Our approach gives very encouraging results for the realization of quality control of an industrial bagging system.
机译:在公司必须提供优质产品的食品行业的竞争世界中,质量控制至关重要。但是,它可能变得昂贵,特别是如果是手动过程。随后它的自动化成为公司的绝佳机会。本研究的目的是找出使用深度学习的工业装袋系统上开放口袋密封的质量控制。在本文中,我们提出了三步方法:数据收集,数据分类和监督分类学习。第一步是收集张开嘴袋的密封件的图像。我们创建了一种基于线路扫描的原型,并将其放在生产线上以收获大量数据。然后应用图像处理以清洁数据。下一步是数据的分类,以识别这些数据的缺陷类和标记。最后,监督分类学习使得可以实现质量控制。我们提出了一种基于卷积神经网络的架构,用于张开嘴袋的图像分类。我们的方法为实现了工业装袋系统的质量控制提供了非常令人鼓舞的结果。

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