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A Defect Inspection Method for Machine Vision Using Defect Probability Image with Deep Convolutional Neural Network

机译:利用深卷积神经网络使用缺陷概率图像的机器视觉缺陷检查方法

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Deep learning is replacing many traditional machine vision techniques. However, defect inspection systems still rely on traditional methods due to difficulties in obtaining training data and the absence of color images. Thus, overall performance heavily depends on individual human skill in tuning hundreds of parameters. This paper presents a defect inspection technique using a defect probability image (DPI) and a deep convolutional neural network (CNN). DPIs are the estimated probability of a defect in given image and can be obtained from traditional inspection techniques. The DPI and gray image are stacked as input to the CNN. Performance was compared with a conventional CNN model using RGB or grayscale images, and ViDi, an artificial intelligence software for industry. The proposed method outperforms the other methods, works well on small dataset, and removes the requirement for human skill.
机译:深度学习正在取代许多传统机器视觉技术。然而,由于获得训练数据和缺乏彩色图像而困难,缺陷检测系统仍然依赖传统方法。因此,整体性能大量取决于调整数百个参数的个体人类技能。本文呈现了使用缺陷概率图像(DPI)和深卷积神经网络(CNN)的缺陷检查技术。 DPI是给定图像中缺陷的估计概率,并且可以从传统的检查技术获得。 DPI和灰度图像被堆叠为CNN的输入。使用RGB或灰度图像的传统CNN模型和VIDI,工业人工智能软件进行比较。所提出的方法优于其他方法,在小型数据集上运行良好,并消除对人类技能的要求。

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