Visualizing laser ablation using plasma imaging and deep learning

IF 1.1 Q4 OPTICS Optics continuum Pub Date : 2023-07-10 DOI:10.1364/optcon.495923
J. Grant-Jacob, B. Mills, M. Zervas
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引用次数: 0

Abstract

High power laser ablation can lead to the creation of plasma and the emission of bright light, which can prevent the direct observation of the workpiece. Alternative techniques for enabling the visualization of the sample during laser machining are therefore of interest. Here, we show that the plasma created during laser ablation, when viewed perpendicular to the sample surface, contains information regarding the appearance of the sample. Specifically, we show that deep learning can predict the 2D appearance of the sample, directly from 2D projected images of the plasma produced during single pulse femtosecond laser ablation. In addition, this approach also enables the identification of the pulse energy of the most recent laser pulse used to machine the sample. This work could have applications across laser materials processing in research and industry, in cases where there is a requirement for real-time visualization of the sample surface during laser ablation.
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使用等离子体成像和深度学习可视化激光消融
高功率激光烧蚀可以导致等离子体的产生和明亮的光的发射,这可以阻止直接观察工件。因此,在激光加工过程中使样品可视化的替代技术引起了人们的兴趣。在这里,我们展示了激光烧蚀过程中产生的等离子体,当垂直于样品表面观察时,包含有关样品外观的信息。具体来说,我们表明深度学习可以直接从单脉冲飞秒激光烧蚀过程中产生的等离子体的二维投影图像预测样品的二维外观。此外,这种方法还可以识别用于加工样品的最新激光脉冲的脉冲能量。这项工作可以应用于研究和工业中的激光材料加工,在激光烧蚀过程中需要实时可视化样品表面的情况下。
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