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Online quality inspection using Bayesian classification in powder-bed additive manufacturing from high-resolution visual camera images

机译:在线质量检验,在粉床添加剂制造中使用贝叶斯分类,高分辨率视觉相机图像

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Despite their advances and numerous benefits, metal powder-bed additive manufacturing (AM) processes still suffer from the high chances of defect formation and a need for improved quality. This work develops an online monitoring system for quality of fusion and defect formation in every layer of the laser powder-bed fusion process using computer vision and Bayesian inference. An imaging setup is developed that for the first time allows capturing in-situ (during the build) images from every layer that visualize detailed layer defects and porosity. A database of camera images from every layer of AM parts made with various part quality was created that is the first visual labeled dataset from in-situ visual images of the powder-bed AM (also visualizing detailed layer features). The dataset is used in training-based classification to detect layers or sub-regions of the layer with low quality of fusion or defects. Features are carefully selected based on physical intuition into the process and extracted from the images of the various types of builds. A Bayesian classifier is developed and trained to classify the quality of the build that signifies the defective and unacceptable build layers or regions. The results can be used for quasi-real-time (layer-wise) process control, further process decisions, or corrective actions.
机译:尽管他们进展和许多益处,但金属粉床添加剂制造业(AM)过程仍然遭受缺陷地层的高机会,并且需要提高质量。这项工作在使用计算机视觉和贝叶斯推理的每层激光粉末融合过程中,开发了一个在线监测系统,用于各层融合和缺陷地层。开发了一个成像设置,首次允许从可视化详细层缺陷和孔隙度的每个层捕获原位(在构建)图像中。创建了来自各个部分质量的每层AM部件的相机图像数据库是从粉末床AM的原位视觉图像(也可视化详细层特征)的第一视觉标记数据集。数据集用于基于培训的分类,以检测具有低质量融合或缺陷的层的层或子区域。根据物理直觉精心选择功能,并从各种类型的构建图像中提取。开发和培训贝叶斯分类器,以分类构建的质量,表示有缺陷和不可接受的构建层或地区。结果可用于准实时(层)过程控制,进一步的过程决策或纠正措施。

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