Double frame Tomographic PTV at high seeding densities
Philippe Cornic, Benjamin Leclaire, Fr\'ed\'eric Champagnat, Guy Le, Besnerais, Adam Cheminet, C\'edric Illoul, Gilles Losfeld

TL;DR
This paper introduces Double-Frame Tomo-PTV, a novel 3D particle tracking method that achieves high accuracy at high seeding densities by combining sparse reconstruction, correlation, and subvoxel refinement.
Contribution
The paper presents a new tomographic particle tracking technique that improves particle detection and velocity estimation at high seeding densities compared to existing methods.
Findings
Achieves particle detection efficiency up to 0.08 ppp at high densities.
Lower velocity estimation error than state-of-the-art methods.
Successfully applied to experimental jet flow with realistic seeding densities.
Abstract
A novel method performing 3D PTV from double frame multi-camera images is introduced. Particle velocities are estimated by following three steps. Firstly, separate particle reconstructions with a sparsity-based algorithm are performed on a fine grid. Secondly, they are expanded on a coarser grid on which 3D correlation is performed, yielding a predictor displacement field that allows to efficiently match particles at the two time instants. As these particles are still located on a voxel grid, the third, final step achieves particle position refinement to their actual subvoxel position by a global optimization process, also accounting for their intensities. As it strongly leverages on principles from tomographic reconstruction, the technique is termed Double-Frame Tomo-PTV (DF-TPTV). Synthetic tests on a complex turbulent flow show that the method achieves high particle and vector…
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