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Image Processing based on Deep Neural Networks for Detecting Quality Problems in Paper Bag Production

机译:基于深神经网络的图像处理检测纸袋生产中的质量问题

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It is critical for manufacturers to identify quality issues in production and prevent defective products being delivered to customers. We investigate the use of deep neural networks to perform automatic quality inspections based on image processing to eliminate the current manual inspection. A deep neural network was implemented in a real-world industrial case study, and its ability to detect quality problems was evaluated and analyzed. The results show that the network has an accuracy of 94.5%, which is considered good in comparison to the 70-80% accuracy of a trained human inspector.
机译:制造商对生产的质量问题至关重要,防止向客户提供有缺陷的产品。 我们调查使用深神经网络的使用基于图像处理来实现自动质量检查,以消除当前的手动检查。 深度神经网络在真实的工业案例研究中实施,并评估并分析了其检测质量问题的能力。 结果表明,该网络的准确性为94.5%,与培训的人类检查员的70-80%的精度相比,这被认为是良好的。

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