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A Novel Approach to Component Assembly Inspection Based on Mask R-CNN and Support Vector Machines

机译:基于掩模R-CNN和支持向量机的零件装配检测新方法

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Assembly is a very important manufacturing process in the age of Industry 4.0. Aimed at the problems of part identification and assembly inspection in industrial production, this paper proposes a method of assembly inspection based on machine vision and a deep neural network. First, the image acquisition platform is built to collect the part and assembly images. We use the Mask R-CNN model to identify and segment the shape from each part image, and to obtain the part category and position coordinates in the image. Then, according to the image segmentation results, the area, perimeter, circularity, and Hu invariant moment of the contour are extracted to form the feature vector. Finally, the SVM classification model is constructed to identify the assembly defects, with a classification accuracy rate of over 86.5%. The accuracy of the method is verified by constructing an experimental platform. The results show that the method effectively completes the identification of missing and misaligned parts in the assembly, and has good robustness.
机译:在工业4.0时代,组装是非常重要的制造过程。针对工业生产中零件识别和装配检查的问题,提出了一种基于机器视觉和深度神经网络的装配检查方法。首先,建立图像采集平台以收集零件和装配体图像。我们使用Mask R-CNN模型从每个零件图像中识别和分割形状,并获取零件类别和图像中的位置坐标。然后,根据图像分割结果,提取轮廓的面积,周长,圆度和Hu不变矩,以形成特征向量。最后,建立了支持向量机的分类模型,以识别装配缺陷,分类准确率超过86.5%。通过构建实验平台验证了该方法的准确性。结果表明,该方法有效地完成了组件中缺失和未对准零件的识别,具有良好的鲁棒性。

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