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A velocity program using the Kanade–Lucas–Tomasi feature-tracking algorithm with demonstration for pressure and electroosmosis conditions
Authors:Jasen Devasagayam  Rick Bosma  Christopher M Collier
Institution:1. School of Engineering, University of British Columbia, Kelowna, BC, Canada;2. School of Engineering, University of British Columbia, Kelowna, BC, Canada

School of Engineering, University of Guelph, Guelph, ON, Canada

Abstract:Investigating microfluidic flow profiles is of interest in the microfluidics field for the determination of various characteristics of a lab-on-a-chip system. Microparticle tracking velocimetry uses computational methods upon recording video footage of microfluidic flow to ultimately visualize motion within a microfluidic system across all frames of a video. Current methods are computationally expensive or require extensive instrumentation. A computational method suited to microparticle tracking applications is the robust Kanade–Lucas–Tomasi (KLT) feature-tracking algorithm. This work explores a microparticle tracking velocimetry program using the KLT feature-tracking algorithm. The developed program is demonstrated using pressure-driven and EOF and compared with the respective mathematical fluid flow models. An electrostatics analysis of EOF conditions is performed in the development of the mathematical using a Poisson's Equation solver. This analysis is used to quantify the zeta potential of the electroosmotic system. Overall, the KLT feature-tracking algorithm presented in this work proved to be highly reliable and computationally efficient for investigations of pressure-driven and EOF in a microfluidic system.
Keywords:Electroosmosis  Electrostatics  Lab-on-a-chip  Microparticle tracking velocimetry  Pressure-driven flow
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