4.4 Article

Advanced iterative particle reconstruction for Lagrangian particle tracking

Journal

EXPERIMENTS IN FLUIDS
Volume 62, Issue 8, Pages -

Publisher

SPRINGER
DOI: 10.1007/s00348-021-03276-7

Keywords

-

Funding

  1. Projekt DEAL
  2. Deutsche Forschungsgemeinschaft (DFG) [SCHR 1165/5-1, DFG SPP 1881]
  3. European Union [769237]

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The proposed novel approaches in iterative particle reconstruction method significantly improve its working range in terms of particle image densities, while maintaining its speed, accuracy, and robustness against image noise. The updated method is easy to implement with low computational cost.
The method of iterative particle reconstruction (IPR), introduced by Wieneke (Meas Sci Technol 24:024008, 2013), constitutes a major step toward Lagrangian particle tracking in densely seeded flows (Schanz et al. in Exp Fluids 57:1-27, 2016). Here we present novel approaches in several key aspects of the algorithm, which, in combination, triple the working range of IPR in terms of particle image densities. The updated method is proven to be fast, accurate and robust against image noise and other imaging artifacts. Most of the proposed changes to the original processing are easy to implement and come at low computational cost. Furthermore, a bundle adjustment scheme that simultaneously updates the 3D locations of all particles and the camera calibrations is introduced. While the particle position optimization proved to be more effective using localized 'shake' schemes, this so-called global shake scheme constitutes an effective measure to correct for decalibrations and vibrations, acting as an in-situ single-image volume-self-calibration. Further optimization strategies using such approaches are conceivable.

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