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Research on Detection Method of Coating Defects Based on Machine Vision

机译:基于机器视觉的涂层缺陷检测方法研究

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Aiming at the problems in the current coating surface defects detection that it is difficult to characterize the defect features, furthermore the detection accuracy and efficiency are hard to meet industrial demand, in this paper, a machine vision system for coating defects detection is designed; then, a coating defects classification method based on convolutional neural network which is trained and tested through cross-validation to realize the classification of multi-type coating defects, is proposed. According to the collected coating dataset including defect-free coating and four types coating defects: crack coating, running coating, orange peeling coating and adhesion failure coating, the classification performance of multi-type convolutional neural networks is analyzed experimentally. Among the five convolutional neural networks, Resnet50 achieves the best detection effect, precision: 95.0% and accuracy: 97.9%. The detection performance of Densenet121 is similar to Resnet50’s, but the model size of Densenet121 is only 1/3 of former’s; furthermore, these two types of networks are tested on captured coating defects in actual spraying process, the average precision and accuracy of classification were 93.3% and 97.3%, 91.8% and 96.7%, respectively, and the detection time for each image is 0.028s and 0.025s, respectively. Therefore, Experiments prove that the purposed method is convenient and quick to detect coating surface defects, and it has high precision and accuracy. Thus, the method can be used for industrial site detection.
机译:旨在目前涂层表面缺陷检测的问题,难以表征缺陷特征,此外,难以满足工业需求的检测精度和效率,设计了一种用于涂层缺陷检测的机器视觉系统;然后,提出了一种基于卷积神经网络的涂覆缺陷分类方法,其通过交叉验证训练和测试以实现多型涂层缺陷的分类。根据收集的涂层数据集,包括无缺陷涂层和四种类型的涂层缺损:裂纹涂层,运行涂层,橙剥离涂层和粘附破坏涂层,实验分析了多型卷积神经网络的分类性能。在五个卷积神经网络中,RESET50实现了最佳的检测效果,精确度:95.0%和准确度:97.9%。 DenSenet121的检测性能类似于Reset50,但Densenet121的模型大小仅为前者的1/3;此外,这两种类型的网络在实际喷涂过程中捕获涂层缺陷测试,分类的平均精度和精度分别为93.3%和97.3%,91.8%和96.7%,每个图像的检测时间为0.028秒分别为0.025s。因此,实验证明了所用方法方便且快速地检测涂层表面缺陷,并且具有高精度和精度。因此,该方法可用于工业部位检测。

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