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Neural network based image segmentation for spatter extraction during laser-based powder bed fusion processing

机译:基于神经网络的基于神经网络的图像分割,用于激光基粉覆盖融合过程中的喷溅

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摘要

In situ monitoring of spatter signatures is often employed to improve product quality during laser-based powder bed fusion (LPBF). This paper describes a novel neural network (NN) based image segmentation method for spatter extraction with a simple labeling process and high accuracy results. Use of a 290-1100 nm waveband high-speed camera allowed capturing images with more complete spatter signatures and a more complex background compared with previous LPBF studies. Conventional image segmentation approaches are inadequate to perform spatter extraction because of the complex background. The proposed NN-based image segmentation method split images into a block grid and segmented each block using a parallel convolutional neural network (CNN) and a thresholding neural network (TNN), which permitted extracting 80.48% of spatters in only 70 ms. Furthermore, the ability to extract spatters connected to a molten pool distinguishes the proposed NN-based image segmentation method from conventional image segmentation approaches.
机译:原位监测飞溅签名通常用于改善基于激光的粉末床融合(LPBF)期间的产品质量。本文介绍了一种基于新的神经网络(NN)的图像分割方法,用于使用简单的标记过程和高精度结果进行喷溅提取。使用290-1100nm波段高速摄像机允许捕获具有更完整的喷溅签名的图像和与以前的LPBF研究相比更复杂的背景。由于复杂的背景,常规图像分割方法不充分以执行喷溅开采。所提出的基于NN的图像分割方法将图像分成块网格并使用并行卷积神经网络(CNN)和阈值的神经网络(TNN)分段,其允许在仅70毫秒中提取80.48%的飞溅物。此外,提取连接到熔池的飞溅物的能力区分了所提出的基于NN的图像分割方法从传统的图像分割方法。

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