Confocal laser scanning microscopy image correlation for nanoparticle flow velocimetry
Brian Jun, Matthew Giarra, Haisheng Yang, Russell Main, Pavlos Vlachos

TL;DR
This paper introduces an improved confocal laser scanning microscopy image correlation method for nanoparticle flow velocimetry, addressing diffusion and scanning biases to achieve more accurate measurements.
Contribution
It develops an ensemble RPC-based SLIC technique with an optimal filter and an analytical bias correction model, significantly enhancing nanoparticle flow velocity estimation accuracy.
Findings
Error reduced by up to a factor of ten
Ensemble correlation converges two orders faster
Bias correction depends on velocity ratio
Abstract
We present a new particle image correlation technique for resolving nanoparticle flow velocity using confocal laser scanning microscopy (CLSM). The two primary issues that complicate nanoparticle scanning laser image correlation (SLIC) based velocimetry are (1) the use of diffusion dominated nanoparticles as flow tracers, which introduce a random decorrelating error into the velocity estimate, and (2) the effects of the scanning laser image acquisition, which introduces a bias error. To date, no study has quantified these errors or demonstrated a means to deal with them in SLIC velocimetry. In this work, we build upon the robust phase correlation (RPC) and existing methods of SLIC to quantify and mitigate these errors. First, we implement an ensemble RPC instead of using an ensemble standard cross correlation, and develop an SLIC optimal filter that maximizes the correlation strength in…
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Taxonomy
TopicsPlant Water Relations and Carbon Dynamics · Fluid Dynamics and Turbulent Flows · Particle Dynamics in Fluid Flows
