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Deep Learning-Based Intelligent Defect Detection of Cutting Wheels with Industrial Images in Manufacturing

机译:基于深度学习的智能缺陷检测制造业工业形象的切割轮

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The cutting wheel is an important tool in the television liquid crystal display (LCD) panel manufacturing process. The degradation of the cutting wheel significantly affects the LCD panel quality. Currently, there is few effective approaches that can detect the degradation of the cutting wheel at the working station for health monitoring purpose, due to the small size of the component and the complex manufacturing operation. That leads to high economic costs in the production lines in the real industries. In order to address this issue, this paper presents a deep convolutional neural network-based method for defect detection of the cutting wheels using the industrial images. An end-to-end health monitoring system is built based on machine vision, which directly takes the raw images as inputs, and outputs the detection results. That facilitates the industrial applications since little prior knowledge on image processing and fault detection is required. The experiments on a real-world cutting wheel degradation dataset are carried out for validation. High fault diagnosis testing accuracies are obtained, that indicates the proposed method offers an effective and promising approach for the cutting wheel health monitoring problem.
机译:切割轮是电视液晶显示器(LCD)面板制造工艺中的重要工具。切割车轮的劣化显着影响LCD面板质量。目前,由于部件的尺寸和复杂的制造操作的尺寸和复杂的制造操作,很少有很少的方法可以检测用于健康监测目的的工件站的切割轮的劣化。这导致实业生产线的经济成本高。为了解决这个问题,本文提出了一种深度卷积神经网络的方法,用于使用工业图像缺陷切割轮的缺陷检测。基于机器视觉构建端到端的健康监测系统,该系统直接将原始图像作为输入,并输出检测结果。促进工业应用,因为需要几乎不需要对图像处理和故障检测的知识。对实际切割轮劣化数据集进行实验进行验证。获得高故障诊断测试精度,表示该方法提供了一种用于切割轮运行状况监测问题的有效和有希望的方法。

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