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.Product Quality Detection and Recognition based on Vision and Deep Learning

机译:基于视觉和深度学习的产品质量检测与识别

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In order to address the defective surface of products in traditional manufacturing, the detection efficiency and accuracy of defects should be improved to sort out products effectively. The combination of in-depth learning and machine vision technology can realize accurate detection of product quality. In the first place product data and images that were collected through machine vision and the illuminating system were uploaded to the cloud. And then, by analyzing such data and images, a convolutional neural network model was built and used to train and divide test sets through in-depth learning. At last, then this model was applied to check sample products for defective surfaces and classify types of defects with high accuracy and efficiency. Machine vision and cloud can collect and analyze quality data, while in-depth learning improves detection accuracy.
机译:为了解决传统制造中产品的缺陷表面,应改善缺陷的检测效率和准确性,以有效地整理产品。深入学习和机器视觉技术的组合可以实现对产品质量的准确检测。在通过机器视觉和照明系统收集的第一个产品数据和图像上传到云。然后,通过分析这种数据和图像,建立并用来通过深入学习培训和划分测试集的卷积神经网络模型。最后,然后应用此模型来检查样品产品,用于缺陷表面,并以高精度和效率对缺陷进行分类。机器视觉和云可以收集和分析质量数据,而深入学习提高了检测精度。

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