TL;DR
This paper introduces a novel integrated approach for 3D fluid flow estimation that jointly reconstructs individual tracer particles and a dense 3D motion field, improving accuracy and efficiency over traditional sequential methods.
Contribution
It presents the first joint reconstruction method combining particle and dense flow estimation using an integrated energy minimization framework.
Findings
Achieves approximately 70% improvement over previous separate-step methods.
Produces results comparable to state-of-the-art tracking methods with only two time steps.
Reduces memory consumption by explicitly reconstructing particles.
Abstract
The standard approach to densely reconstruct the motion in a volume of fluid is to inject high-contrast tracer particles and record their motion with multiple high-speed cameras. Almost all existing work processes the acquired multi-view video in two separate steps, utilizing either a pure Eulerian or pure Lagrangian approach. Eulerian methods perform a voxel-based reconstruction of particles per time step, followed by 3D motion estimation, with some form of dense matching between the precomputed voxel grids from different time steps. In this sequential procedure, the first step cannot use temporal consistency considerations to support the reconstruction, while the second step has no access to the original, high-resolution image data. Alternatively, Lagrangian methods reconstruct an explicit, sparse set of particles and track the individual particles over time. Physical constraints can…
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