Machine-learning techniques for 3D particle reconstruction in dusty plasmas
POSTER
Abstract
Dusty plasmas provide an interesting system to study fundamental processes in many-particle systems since the particles can be imaged and followed on the kinetic individual-particle level.
We have performed experiments with dusty plasmas on parabolic flights using a stereoscopic camera system with four cameras. Under microgravity conditions the dust particles form a dense dust cloud, and a small fraction of the dust cloud is imaged by the four cameras.
In this contribution, techniques to reconstruct the three-dimensional position of the dust particles from the stereoscopic images with the help of machine-learning methods are reviewed and tested. This is important for a future application in the Compact facility planned for the ISS [1].
[1] C. Knapek et al., ”COMPACT - A new complex plasma facility for the ISS”, Plasma Phys. Control. Fusion 64 (2022) 12400
We have performed experiments with dusty plasmas on parabolic flights using a stereoscopic camera system with four cameras. Under microgravity conditions the dust particles form a dense dust cloud, and a small fraction of the dust cloud is imaged by the four cameras.
In this contribution, techniques to reconstruct the three-dimensional position of the dust particles from the stereoscopic images with the help of machine-learning methods are reviewed and tested. This is important for a future application in the Compact facility planned for the ISS [1].
[1] C. Knapek et al., ”COMPACT - A new complex plasma facility for the ISS”, Plasma Phys. Control. Fusion 64 (2022) 12400
Presenters
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Andre Melzer
University Greifswald
Authors
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Andre Melzer
University Greifswald
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Michael Himpel
University Greifswald, Germany
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Stefan Schütt
University Greifswald, Germany
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Christina Knapek
University Greifswald, Germany
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Daniel Maier
University Greifswald, Germany
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Daniel Mohr
University Greifswald, Germany