A robust single-pixel particle image velocimetry based on fully convolutional networks with cross-correlation embedded
Qi Gao, Hongtao Lin, Han Tu, Haoran Zhu, Runjie Wei, Guoping Zhang,, Xueming Shao

TL;DR
This paper introduces CC-FCN, a hybrid deep learning and cross-correlation method for particle image velocimetry that achieves super-resolution velocity field estimation with improved accuracy and robustness.
Contribution
The paper presents a novel fully convolutional network with embedded cross-correlation for super-resolution PIV, combining traditional and deep learning techniques.
Findings
Improved accuracy over existing PIV algorithms.
Enhanced robustness and spatial resolution in velocity field estimation.
Effective super-resolution calculation with single-pixel precision.
Abstract
Particle image velocimetry (PIV) is essential in experimental fluid dynamics. In the current work, we propose a new velocity field estimation paradigm, which achieves a synergetic combination of the deep learning method and the traditional cross-correlation method. Specifically, the deep learning method is used to optimize and correct a coarse velocity guess to achieve a super-resolution calculation. And the cross-correlation method provides the initial velocity field based on a coarse correlation with a large interrogation window. As a reference, the coarse velocity guess helps with improving the robustness of the proposed algorithm. This fully convolutional network with embedded cross-correlation is named as CC-FCN. CC-FCN has two types of input layers, one is for the particle images, and the other is for the initial velocity field calculated using cross-correlation with a coarse…
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