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Support Vector Machine and Convolutional Neural Network Based Approaches for Defect Detection in Fused Filament Fabrication

机译:支持向量机和卷积神经网络的基于缺陷丝制造中的缺陷检测方法

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Identifying defective builds early on during Additive Manufacturing (AM) processes is a cost-effective way to reducescrap and ensure that machine time is utilized efficiently. In this paper, we present an automated method to classify 3Dprintedpolymer parts as either good or defective based on images captured during Fused Filament Fabrication (FFF),using independent machine learning and deep learning approaches. Either of these approaches could be potentially usefulfor manufacturers and hobbyists alike. Machine learning is implemented via Principal Component Analysis (PCA) and aSupport Vector Machine (SVM), whereas deep learning is implemented using a Convolutional Neural Network (CNN).We capture videos of the FFF process on a small selection of polymer parts and label each frame as good or defective(2674 good frames and 620 defective frames). We divide this dataset for holdout validation by using 70% of imagesbelonging to each class for training, leaving the rest for blind testing purposes. We obtain an overall accuracy of 98.2%and 99.5% for the classification of polymer parts using machine learning and deep learning techniques, respectively.
机译:在添加剂制造期间识别缺陷的建筑物(AM)过程是一种成本效益的减少方法 废料并确保有效地利用机器时间。在本文中,我们提出了一种自动化方法来分类3DPrint 基于熔丝制造(FFF)捕获的图像,聚合物零件是良好的或有缺陷的, 采用独立机器学习和深度学习方法。这些方法中的任何一个都可能有用 对于制造商和爱好者而相似。通过主成分分析(PCA)和A实现机器学习 支持向量机(SVM),而深入学习是使用卷积神经网络(CNN)实施的。 我们在小型聚合物零件中捕获FFF过程的视频,并将每个帧标记为好或有缺陷 (2674个良好的框架和620个有缺陷的框架)。我们使用70%的图像划分用于HoldOut验证的数据集 属于每个班级进行培训,留下其余的盲目测试目的。我们获得了98.2%的整体准确性 分别使用机器学习和深层学习技术分别为聚合物零件分类99.5%。

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