Yucel, HarunVelu, Sabareesh K. P.2024-10-042024-10-0420212215-0382https://doi.org/10.1016/j.colcom.2021.100546http://hdl.handle.net/20.500.12403/3853We present a MATLAB-based multiple particle tracking (mPosTracker) algorithm to detect and track crowded colloidal particles that are two-dimensionally imaged using digital video microscopy. Our algorithm adopts three optional detection methods using threshold settings namely; centroid method (CM), radial symmetry method (RSM) and partial radial symmetry method (pRSM). In contrast to other reported algorithms, it allows classifying a maximum of three types of particles based on area or intensity. Furthermore, we include a toolbox to perform quantitative particle analysis like number density, trajectories with mean square displacement, and Voronoi cells with six-fold bond parameters to reveal the physics of examined dataset. To demonstrate the abilities of mPosTracker, we show the analysis outcomes on synthetically and experimentally acquired time-lapse microscopy datasets. mPosTracker is suitable for studying the dynamics of crowd behaviour, self-assembly, and manipulation of multi-component colloids under external fields.eninfo:eu-repo/semantics/openAccessDigital video microscopy (DVM)Image processingParticle detectionParticle trackingParticle classificationBinary colloidsCrowded particlesToolbox for tracking and analyzing crowded mixture of colloidal particlesArticle4510.1016/j.colcom.2021.1005462-s2.0-85119158836Q1WOS:000721475300007Q1