论文标题

对象检测网络在高功率激光系统和实验中的应用

Applications of object detection networks at high-power laser systems and experiments

论文作者

Lin, Jinpu, Haberstroh, Florian, Karsch, Stefan, Döpp, Andreas

论文摘要

深层人工神经网络的最近出现导致对象分类和检测的性能急剧提高。虽然预先训练日常对象,但我们发现最先进的对象检测体系结构可以非常有效地进行微调,以在高功率激光实验室中处理各种对象检测任务。在此手稿中,提出了三个示例性应用。我们表明,可以检测并位于光学阴影图上的激光 - 等离子加速器中的等离子体波。相应地估算了血浆波长和血浆密度。此外,我们介绍了加速电子束的电子能谱中所有峰的检测,并相应地估算了每个峰的束电荷。最后,我们证明了在高功率激光系统中检测光损伤的检测。在每个应用程序中,在一千个激光镜头中证明了对象检测器的可靠性。我们的研究表明,即使在小型培训集中,深层对象检测网络也适合在线和离线实验分析。我们认为,提出的方法是适应性但强大的,我们鼓励在控制和诊断工具上,特别是对于涉及图像数据的人,鼓励在高功率激光器设施中进一步应用。

The recent advent of deep artificial neural networks has resulted in a dramatic increase in performance for object classification and detection. While pre-trained with everyday objects, we find that a state-of-the-art object detection architecture can very efficiently be fine-tuned to work on a variety of object detection tasks in a high-power laser laboratory. In this manuscript, three exemplary applications are presented. We show that the plasma waves in a laser-plasma accelerator can be detected and located on the optical shadowgrams. The plasma wavelength and plasma density are estimated accordingly. Furthermore, we present the detection of all the peaks in an electron energy spectrum of the accelerated electron beam, and the beam charge of each peak is estimated accordingly. Lastly, we demonstrate the detection of optical damage in a high-power laser system. The reliability of the object detector is demonstrated over one thousand laser shots in each application. Our study shows that deep object detection networks are suitable to assist online and offline experiment analysis, even with small training sets. We believe that the presented methodology is adaptable yet robust, and we encourage further applications in high-power laser facilities regarding the control and diagnostic tools, especially for those involving image data.

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