Deep learning for laser beam imprinting

Author:

Chalupský J.ORCID,Vozda V.ORCID,Hering J.1,Kybic J.1,Burian T.2,Dziarzhytski S.,Frantálová K.,Hájková V.,Jelínek Š.23ORCID,Juha L.,Keitel B.,Kuglerová Z.3,Kuhlmann M.,Petryshak B.1,Ruiz-Lopez M.ORCID,Vyšín L.,Wodzinski T.ORCID,Plönjes E.

Affiliation:

1. Czech Technical University in Prague

2. Czech Academy of Sciences

3. Charles University

Abstract

Methods of ablation imprints in solid targets are widely used to characterize focused X-ray laser beams due to a remarkable dynamic range and resolving power. A detailed description of intense beam profiles is especially important in high-energy-density physics aiming at nonlinear phenomena. Complex interaction experiments require an enormous number of imprints to be created under all desired conditions making the analysis demanding and requiring a huge amount of human work. Here, for the first time, we present ablation imprinting methods assisted by deep learning approaches. Employing a multi-layer convolutional neural network (U-Net) trained on thousands of manually annotated ablation imprints in poly(methyl methacrylate), we characterize a focused beam of beamline FL24/FLASH2 at the Free-electron laser in Hamburg. The performance of the neural network is subject to a thorough benchmark test and comparison with experienced human analysts. Methods presented in this Paper pave the way towards a virtual analyst automatically processing experimental data from start to end.

Funder

Grantová Agentura České Republiky

Horizon 2020 Framework Programme

Fundação para a Ciência e a Tecnologia

Publisher

Optica Publishing Group

Subject

Atomic and Molecular Physics, and Optics

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