4.5 Article

A fast and robust algorithm for general defocusing particle tracking

期刊

MEASUREMENT SCIENCE AND TECHNOLOGY
卷 32, 期 1, 页码 -

出版社

IOP PUBLISHING LTD
DOI: 10.1088/1361-6501/abad71

关键词

general defocusing particle tracking; particle tracking velocimetry; microfluidics; automatic particle detection; acoustofluidics; image analysis; real-time measurement

资金

  1. European Union [713683]

向作者/读者索取更多资源

The increasing use of microfluidics in industrial, biomedical, and clinical applications requires more precise control of microfluidic flows and suspended particles or cells, leading to higher demands in three-dimensional and automated particle tracking methods. General defocusing particle tracking (GDPT) is a versatile approach suitable for different types of images, with fast and segmentation-free features, suitable for automated and real-time applications.
The increasing use of microfluidics in industrial, biomedical, and clinical applications requires a more and more precise control of the microfluidic flows and suspended particles or cells. This leads to higher demands in three-dimensional and automated particle tracking methods, e.g. for use in feedback-control systems. General defocusing particle tracking (GDPT) is a 3D particle tracking method based on defocused particle images which is easy to use and requires standard laboratory equipment. In this work, we describe in detail a fast and robust algorithm for performing GDPT, which is suitable for automatized and real-time applications. Its key feature is a fast, segmentation-free approach to identify particles and estimate their 3D position. This detection step is followed by a refinement and iteration step to improve accuracy and identification of overlapping particles. We show that the algorithm is versatile and can be applied to different types of images (darkfield and brightfield). We use synthetic image sets of varying particle concentration to evaluate the performance of the algorithm in terms of detected depth coordinate uncertainty, particle detection rate, and processing time. The algorithm is applied and validated on experimental images showing that it is robust towards background or illumination fluctuations. Finally, to test the algorithm on real-time applications, we use synthetic images to set up a simulation framework with experimentally-relevant parameters and where the true particle positions are known.

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