2022
DOI: 10.48550/arxiv.2210.02539
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Applications of object detection networks at high-power laser systems and experiments

Abstract: 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 laserplasma accelerator can be detected and located … Show more

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“…For instance, researchers at CALA have been actively working on developing control systems based on Bayesian optimization [18] and have used object detection networks to actively monitor various features or patterns in diagnostics (e.g. optical damage or few-cycle images of laser-driven plasma waves) [19] . As an example, Fig.…”
Section: Data Acquisition and Processing Pipeline At Calamentioning
confidence: 99%
“…For instance, researchers at CALA have been actively working on developing control systems based on Bayesian optimization [18] and have used object detection networks to actively monitor various features or patterns in diagnostics (e.g. optical damage or few-cycle images of laser-driven plasma waves) [19] . As an example, Fig.…”
Section: Data Acquisition and Processing Pipeline At Calamentioning
confidence: 99%